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NL1041613B1 - Upsampling sensors to auto-detect a fitness activity. - Google Patents

Upsampling sensors to auto-detect a fitness activity. Download PDF

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Publication number
NL1041613B1
NL1041613B1 NL1041613A NL1041613A NL1041613B1 NL 1041613 B1 NL1041613 B1 NL 1041613B1 NL 1041613 A NL1041613 A NL 1041613A NL 1041613 A NL1041613 A NL 1041613A NL 1041613 B1 NL1041613 B1 NL 1041613B1
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activity
fitness
computer device
user
sensors
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NL1041613A
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NL1041613A (en
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Pal Singh Satinder
Mendes Estephanio De Moura Gustavo
Xiao Ke
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Google Inc
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    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/103Detecting, measuring or recording devices for testing the shape, pattern, colour, size or movement of the body or parts thereof, for diagnostic purposes
    • A61B5/11Measuring movement of the entire body or parts thereof, e.g. head or hand tremor, mobility of a limb
    • A61B5/1123Discriminating type of movement, e.g. walking or running
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/103Detecting, measuring or recording devices for testing the shape, pattern, colour, size or movement of the body or parts thereof, for diagnostic purposes
    • A61B5/11Measuring movement of the entire body or parts thereof, e.g. head or hand tremor, mobility of a limb
    • A61B5/1118Determining activity level
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B2560/00Constructional details of operational features of apparatus; Accessories for medical measuring apparatus
    • A61B2560/02Operational features
    • A61B2560/0204Operational features of power management
    • A61B2560/0209Operational features of power management adapted for power saving
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F1/00Details not covered by groups G06F3/00 - G06F13/00 and G06F21/00
    • G06F1/26Power supply means, e.g. regulation thereof
    • G06F1/32Means for saving power
    • G06F1/3203Power management, i.e. event-based initiation of a power-saving mode
    • G06F1/3234Power saving characterised by the action undertaken
    • G06F1/324Power saving characterised by the action undertaken by lowering clock frequency

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  • Health & Medical Sciences (AREA)
  • Life Sciences & Earth Sciences (AREA)
  • Engineering & Computer Science (AREA)
  • Medical Informatics (AREA)
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  • Animal Behavior & Ethology (AREA)
  • General Health & Medical Sciences (AREA)
  • Public Health (AREA)
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  • Measurement Of The Respiration, Hearing Ability, Form, And Blood Characteristics Of Living Organisms (AREA)

Abstract

In some examples, a method includes detecting, based at least in part on sampling a first set (122) of a plurality of sensors of a computing device (110) at a first rate, an indication that the user has initiated a fitness activity (112B), wherein the computing device (110) stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities; responsive to detecting the indication that the user has initiated the fitness activity, sampling, at a second rate that is greater than the first rate, a second set (120) of the plurality of sensors to determine a probability that the user is engaged in the fitness activity (112B); and responsive to determining that the probability satisfies a threshold, collecting, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defined identifier for the fitness activity (112B).

Description

UPSAMPLING SENSORS TO AUTO DETECT A FITNESS ACTIVITY
BACKGROUND
[0001] Some mobile and wearable computing devices may track user activity to assist users in maintaining healthier and more active lifestyles. For instance, a mobile computing device may include one or more sensor components, which provide data that may be indicative of a user engaging in an activity. The mobile computing device may collect and process data from such sensor components to provide information to a user that is descriptive of the activities of the user over time.
[0002] In order to identify activities of the user, the computing device may process data from one or more of the sensor components. However, using many sensor components to identify activities of the user may adversely affect power consumption in the computing device. Conversely, using a set of only a single or few sensor components to identify an activity may adversely affect the accuracy of correctly detecting the actual activity performed by a user. As such, some computing devices may inaccurately identify a particular activity of a user and/or consume excessive amounts of power.
SUMMARY
[0003] In some examples, a method includes detecting, by a computing device of a user and based at least in part on sampling a first set of a plurality of sensors of the computing device at a first rate, an indication that the user has initiated a fitness activity, wherein the computing device stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities. Responsive to detecting the indication that the user has initiated the fitness activity, sampling, by the computing device in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors. Responsive to determining that the probability satisfies a threshold, collecting, by the computing device in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a predefined identifier for the fitness activity in the set of pre-defined indications of activities.
[0004] In some examples, a non-transitory computer-readable storage medium is encoded with instructions that, when executed, cause at least one processor of a computing device for a user to: detect, based at least in part on sampling a first set of a plurality of sensors of the computing device at a first rate, an indication that the user has initiated a fitness activity, wherein the computing device stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities. The non-transitory computer-readable storage medium may also be encoded with instructions that, when executed, cause the at least one processor of the computing device to, responsive to detecting the indication that the user has initiated the fitness activity, sample, in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors. The non-transitory computer-readable storage medium may also be encoded with instructions that, when executed, cause the at least one processor of the computing device to, responsive to determining that the probability satisfies a threshold, collect, in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defined identifier for the fitness activity in the set of pre-defined indications of activities.
[0005] In some examples, a computing device comprises: one or more computer processors; a plurality of sensors operably coupled to the one or more computer processors; and a memory comprising instructions. The instructions, when executed by the one or more computer processors, cause the one or more computer processors to: detect, based at least in part on sampling a first set of the plurality of sensors of the computing device at a first rate, an indication that a user of the computing device has initiated a fitness activity, wherein the computing device stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities. The instructions, when executed by the one or more computer processors, may cause the one or more computer processors to: responsive to detecting the indication that the user has initiated the fitness activity, sample, by the computing device in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors. The instructions, when executed by the one or more computer processors, cause the one or more computer processors to: responsive to determining that the probability satisfies a threshold, collect, by the computing device in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defined identifier for the fitness activity in the set of pre-defined indications of activities.
[0006] In some examples, an apparatus comprises: means for detecting, based at least in part on sampling a first set of a plurality of sensors of the computing device at a first rate, an indication that a user of the apparatus has initiated a fitness activity, wherein the apparatus stores pre-defined identifiers of non-fitness and fitness activities in a set of predefined indications of activities. The apparatus may further comprise means for, responsive to detecting the indication that the user has initiated the fitness activity, sampling, by the apparatus in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors. The apparatus may further comprise means for, responsive to determining that the probability satisfies a threshold, collecting, by the apparatus in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defined identifier for the fitness activity in the set of pre-defined indications of activities.
[0007] The details of one or more examples are set forth in the accompanying drawings and the description below. Other features, objects, and advantages of the disclosure will be apparent from the description and drawings, and from the claims.
BRIEF DESCRIPTION OF DRAWINGS
[0008] FIG. 1 is a conceptual diagram illustrating a computing device that may detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure.
[0009] FIG. 2 is a block diagram illustrating further details of a computing device that may detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure.
[0010] FIG. 3 illustrates an example state machine that may be implemented at a computing device to detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure.
[0011] FIG. 4 includes an example timeline that illustrates sampling rates for detecting a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure.
[0012] FIG. 5 is a flow diagram illustrating example operations of a computing dev ice that may detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure.
DETAILED DESCRIPTION
[0013] Techniques of the disclosure are directed to improving the accuracy of detecting a fitness activity with lower latency by upsampling sensor components of a computing device in response to initially detecting a fitness activity. For instance, a computing device may include a set of sensor components, such as a location sensor, motion sensor, heartrate sensor and the like. To conserve power, the computing device may sample one or only a few of the sensor components at an initial, slower rate to initially detect and identify a particular activity of a user. If the computing device detects a change in activity to a fitness activity, such as transitioning from standing still to running or biking, the computing device may temporarily upsample a larger set of sensor components at a higher rate. As a consequence, the computing device uses more data from a larger set of sensor components to more accurately detect whether the user is actually engaged in the detected fitness activity. If the computing device detects a fitness activity, the computing device can temporarily generate and/or acquire a larger amount of sensor component data in a shorter period of time. By doing so, the computing device may confirm that the user is engaged in the fitness activity with less latency because the computing device may not have to wait for additional data at the slower sampling rate to confirm the user is actually engaged in the fitness activity.
[0014] If the computing device is unable to determine whether the user is engaged in the detected activity with sufficient confidence, the computing device may revert back to sampling a smaller set of sensor components at a slower rate, thereby conserving power. Alternatively, if the computing device determines with sufficient confidence that that the user is engaged in the detected fitness activity, the computing device may begin collecting fitness information for the user based on data from a set of sensor components. In this way, techniques of the disclosure may improve power use of the computing device by temporarily upsampling sensor data, while potentially detecting activities with greater accuracy and/or lower latency. Moreover, based on detecting a specific fitness activity with sufficient confidence, the techniques may collect fitness information for the user based on data from a particular set of sensor components that correspond to the specific fitness activity, thereby potentially saving power.
[0015] FIG. 1 is a conceptual diagram illustrating a computing device 110 that may detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure. As shown in FIG. 1, computing device 110 may be a smartphone. In some examples, computing device 110 may be a laptop computer, a tablet computer, an e-book reader computing device, an in-vehicle computing device (e.g., an automobile console computing device), a fitness equipment computing device (e.g., a bike-mounted computing device), a head-mounted computing device, or any other computing device suitable for detecting an activity of a user.
[0016] In some examples, computing device 110 may include a presence-sensitive display 112. Presence-sensitive display 112 of computing device 110 may function as an input device for computing device 110 and as an output device. Presence-sensitive display 112 may be implemented using various technologies. For instance, presence-sensitive display 112 may function as an input device using a presence-sensitive input component, such as a resistive touchscreen, a surface acoustic wave touchscreen, a capacitive touchscreen, a projective capacitance touchscreen, a pressure-sensitive screen, an acoustic pulse recognition touchscreen, or another presence-sensitive display technology. Presence-sensitive display 112 may function as an output (e.g., display) device using any one or more display components, such as a liquid crystal display (LCD), dot matrix display, light emitting diode (LED) display, organic light-emitting diode (OLED) display, e-ink, or similar monochrome or color display capable of outputting visible information to a user of computing device 110.
[0017] Computing device 110 may also include one or more sensor components 114A-114N (“sensor components 114”). In some examples, a sensor component may be an input component that obtains environmental information of an environment that includes computing device 110. A sensor component may be an input component that obtains physiological information of a user of computing device 110. In some examples, a sensor component may be an input component that obtains physical position, movement, and/or location information of computing device 110. For example, sensor components 114 may include, but are not limited to: movement sensors (e.g., accelerometers), temperature sensors, position sensors (e.g., a gyro), pressure sensors (e.g., a barometer), proximity sensors (e.g., an inferred sensor), ambient light detectors, heart-rate monitors, location sensors (e.g., Global Positioning System sensor), or any other type of sensing component. Other examples of sensor components are described in FIG. 2. As further described in this disclosure, activity recognition module 118 may determine one or more user activities based on raw sensor data generated by one or more of sensor components 114.
[0018] In some examples, computing device 110 may be communicatively coupled to a wearable computing device 100. For instance, computing device 110 may use one or more communication protocols to send and receive data with wearable computing device 100. In some example examples, communication protocols may include Bluetooth, Near-Field Communication, Wi-Fi, or any other suitable communication protocol.
[0019] In the example of FIG. 1, wearable computing device 100 is a computerized watch. However in other examples, wearable computing device 100 (“wearable 100”)) is a computerized fitness band/tracker, computerized eyewear, computerized headwear, a computerized glove, etc. In other examples, wearable 100 may be any type of mobile computing device that can attach to and be worn on a person’s body or clothing. For example, wearable 100 may be any tablet computer, mobile phone, personal digital assistant (PDA), game system or controller, media player, e-book reader, television platform, navigation system, remote control, or other mobile computing device that can easily be moved by a user in accordance with the below described techniques.
[0020] As shown in FIG. 1, in some examples, wearable 100 may include attachment component 102 and electrical housing 104. Housing 104 of wearable 100 includes a physical portion of a wearable computing device that houses a combination of hardware, software, firmware, and/or other electrical components of wearable 100. For example, FIG. 1 shows that within housing 104, wearable computing device 100 may include sensor components 108A-108N (“sensor components 108”) and presence-sensitive display 106. Presence-sensitive display 106 may be a presence-sensitive display as described with respect to presence-sensitive display 112, and sensor components 108 may be sensor components as described with respect to sensor components 114. Housing 104 may also include other hardware components and/or software modules not show in FIG. 1, such as one or more processors, memories, operating systems, applications, and the like.
[0021] Attachment component 102 may include a physical portion of a wearable computing device that comes in contact with a body (e.g., tissue, muscle, skin, hair, clothing, etc.) of a user when the user is wearing wearable computing device 100 (though, in some examples, portions of housing 104 may also come in contact with the body of the user). For example, in cases where wearable computing device 100 is a watch, attachment component 102 may be a watch band that fits around a user’s wrist and comes in contact with the skin of the user. In examples where wearable computing device 100 is eyewear or headwear, attachment component 102 may be a portion of the frame of the eyewear or headwear that fits around a user’s head, and when wearable computing device 100 is a glove, attachment component 102 may be the material of the glove that conforms to the fingers and hand of the user. In some examples, wearable computing device 100 can be grasped and held from housing 104 and/or attachment component 102.
[0022] As shown in FIG. 1, computing device 110 may include activity recognition module 118. Activity recognition module 118 may determine one or more activities of a user based on raw sensor data generated by one or more of sensor components 114. For instance, activity recognition module 118 maintain a set one or more pre-defmed identifiers that each respectively correspond to a different user activity. In some examples, the pre-defmed identifiers may be enumerated values that correspond to different user activities, while in other examples, activity recognition module 118 may use any other suitable type of value (e.g., string, integer, and the like). Activities detected by activity recognition module 118 may include but are not limited to: riding in a vehicle, riding on a bicycle, moving on foot, running, remaining still (e.g., not moving), tiling or otherwise changing the angle of computing device 110 relative to gravity, or walking. Activity recognition module 118 may store pre-defmed identifiers that each correspond to a respective activity, such as IN VEHICLE, ON BICYCLE, ON FOOT (e.g., walking or running), RUNNING, STILL (e.g., device is still/not moving), TILTING (e.g., device angle relative to a reference, such as gravity, has changed more than a threshold amount), and WALKING. In some examples, activity recognition module 118 may also maintain a pre-defmed identifier, such as UNKNOWN, which corresponds to an activity that is not recognized or identifiable by activity recognition module 118.
[0023] In some examples, activities may be categorized into subsets, such as fitness activities and non-fitness activities. A fitness activity may be an activity that elevates a user’s heartrate above a resting heartrate and/or requires physical effort that is carried out to sustain or improve health and fitness. Examples of fitness activities include, but are not limited to: biking, walking, running, weight-lifting, calisthenics, to name only a few examples. A non-fitness activity may be an activity that does not elevate a user’s heartrate above a resting heartrate and/or does not require physical effort that is carried out to sustain or improve health and fitness. Examples of non-fitness activities include, but are not limited to: riding in a vehicle, standing/sitting/laying, or a device remaining still. In some examples, activity recognition module 118 and/or activity detection module 116 may store information that indicates whether a predefined identifier for an activity is a fitness activity, a non-fitness activity, or an unknown activity.
[0024] Although activity recognition module 118 and activity detection module 116 are described as implemented and operating at computing device 110 for example purposes, wearable computing device 100 may also implement and/or operate an activity recognition module and/or activity detection module that include functionality described with respect to activity recognition module 118 and activity detection module 116 of computing device 110. In some examples, an activity recognition module and/or activity detection module implemented and/or operating at wearable computing device 100 may send and receive information (e.g., activity recognition results (“ARRs”), raw sensor component data, and the like) with activity recognition module 118 and activity detection module 116 via wired or wireless communication. Activity recognition module 118 and activity detection module 116 may use such information received from wearable computing device 100 in accordance with techniques of the disclosure, as though the information were generated locally at computing device 110.
[0025] Activity recognition module 118 may receive raw sensor data that correspond to one or more of sensor components 114 and determine one or more activities that the user is engaged in. For instance, activity recognition module 118 may receive raw sensor data from sensor processing modules (e.g., as further described in FIG. 2). Sensor processing modules may provide interfaces between hardware that implement sensor components 114 and modules, such as activity recognition module 118, that further process the raw sensor data. For example, a sensor processing module may generate raw sensor data that represent or otherwise correspond to outputs of hardware that implement a particular sensor component. As an example, a sensor processing module for a GPS sensor component may generate raw sensor data that includes latitude and longitude values. As another example, a sensor processing module for an accelerometer sensor component may generate raw sensor data that includes acceleration values along different axes of a coordinate system.
[0026] Activity recognition module 118 may use one or more known techniques to identify an activity of a user based on raw sensor data. Examples of such activity recognition techniques include k-nearest neighbor, Hidden Markov Models, decision trees, bag of features, Bayesian classifiers, support vector machine classifiers, and machine learning, to name only a few examples. Activity recognition module 118 may maintain one or more models that are based on a particular activity recognition technique. Initially, activity recognition module 118 may train the model based on instances of raw sensor data that correspond to known user activities. For instance, a user that engages in a particular activity may cause a computing device to generate a particular collection of raw sensor data over a period of time. Activity recognition module 118 may train the one or more models based on one or more collections of raw sensor data that correspond to respective activities. In this way, if activity recognition module 118 later receives a collection of raw sensor data that corresponds to a particular activity, activity recognition module 118 may correctly identify the particular activity.
[0027] Activity recognition module 118 may generate, based on the raw sensor data, one or more probabilities that correspond to one or more user activities. That is, activity recognition module 118 may, for raw sensor data at a particular period in time, generate respective probabilities for respective user activities. Activity recognition module 118 may use raw sensor data generated by one or more of sensor components 114, one or more of sensor components 108, and/or a combination of any of sensor components 114 and sensor components 108. As an example, activity recognition module 118 may, for raw sensor data generated at or over a particular period in time, generate a probability of 0.5 that the user is WALKING, a probability of 0.3 that the user is RUNNING, and a probability of 0.2 that the activity that the user is engaged in UNKNOWN (e.g., an unknown activity). In some examples, activity recognition module 118 may generate an activity recognition result (ARR) that includes activity-probability pairs, which are based on raw sensor data at or during a particular period in time. In some examples, an ARR may be implemented as an object. For purposes of this disclosure an object may refer to a data structure, variable or particular instance of a class in object-oriented programming that includes variables and/or functions.
[0028] In some examples, activity recognition module 118 may provide one or more application programming interfaces (APIs) that are accessible to other modules of computing device 110. For instance, activity detection module 116 may call or otherwise invoke one or more APIs of activity recognition module 118 to receive ARRs. In some examples, activation recognition module 118 may be implemented as a service, which other modules may utilize. For instance, activity detection module 116 may register with activity recognition module 118 to receive ARRs. In some examples, activity recognition module 118 may periodically and/or asynchronously push ARRs to activity detection module 116 as the ARRs are generated by activity recognition module 116. In other examples, activity detection module 116 may periodically and/or asynchronously poll activity recognition module 118 for ARRs.
[0029] As shown in FIG. 1, computing device 110 may include activity detection module 116. Activity detection module 116 may determine or otherwise identify a particular activity that the user is performing based on a set of ARRs over time, rather than determining the particular activity based on a single ARR. Based on identifying the particular activity, activity detection module 116 may cause computing device 110 to perform one or more operations specific to the particular activity, such as collecting specific data from specific sensors for the particular activity.
[0030] Activity detection module 116 may periodically determine what activity the user is performing based on a set of ARRs over a period of time. For instance, activity detection module 116 may register with activity recognition module 118 to receive ARRs or periodically poll activity recognition module 114 to receive ARRs. In either case, activity detection module 116 may collect or otherwise receive an ARR at a particular rate (e.g., 1 ARR per minute). For instance, activity detection module 116 may receive an ARR every minute from activity recognition module 118. Activity detection module 116 may store a defined quantity of ARRs, which activity detection module 116 further processes to determine which activity the user is engaged in. For example, activity detection module 116 may store the most recent 30 ARRs in a cyclic buffer. The defined quantity may be based on a maximum count of ARRs to store and/or a maximum time duration (e.g., 30 minutes) to retain ARRs from the time that the ARRs are created.
[0031] In some examples, activity detection module 116 may use each ARR included in a defined quantity of ARRs to determine which activity the user is engaged in over a recent period of time. Activity detection module 116 may, for instance, determine respective aggregate probabilities for respective activities using one or more techniques. For instance, activity detection module 116 may determine, for each activity, an average of the probabilities for the activity in each of the ARRs in the set of ARRs. As an example, activity detection module 116 may average the probability for walking in each ARR of a set of ARRs to determine the aggregate probability for walking. As another example, activity detection module 116 may periodically run a Hidden Markov Model (HMM) transformation on a defined quantity of ARRs. In some examples, the HMM transformation may indicate which activity the user is engaged in over a recent period of time. For instance, the HMM transformation may indicate which activity the user was engaged in over the longest period of time based on the defined quantity of ARRs. In some examples, the HMM transformation may indicate one or more probabilities for one or more respective activities, where each respective probability indicates a likelihood of a user performing the activity.
[0032] Activity detection module 116 may apply, as an HMM transformation, one or more techniques, such as one or more known forward-backward algorithms that compute posterior marginal distributions for an HMM in two passes—one pass evaluating ARRs forward in time to determine probabilities for respective activities, and the second pass evaluating ARRs backward in time to determine probabilities for respective activities. Each state in the HMM may represent a different activity, and as such, activity detection module 116 may determine probabilities for different activities based on the probabilities generated using a forward-backward algorithm for different states.
[0033] In either of the averaging and HMM techniques, activity detection module 116 is able to determine which activity the user is most likely engaged in over a recent period of time (e.g., for the defined quantity of ARRs). In some examples, the activity that the user is most likely engaged in for the defined quantity of ARRs may be referred to as the identified activity. For instance, activity detection module 116 may determine that the identified activity is the activity with the highest respective probability. In another example, activity detection module 116 may determine that the identified activity is the activity that the user was engaged in most frequently over a particular period of time. As described above, based on determining the identified activity, activity detection module 116 may cause computing device 110 to perform one or more operations specific to the identified activity, such as collecting specific data from specific sensors for the identified activity.
[0034] To conserve power, activity recognition module 118 may generate ARRs based raw sensor data from one or only a few of the total number of available sensor components 114. Activity recognition module 118 may conserve power by reducing the sampling rate with which it receives raw sensor data from a set of one or more of sensor components 114. For instance, activity recognition module 118 may generate ARRs based on raw sensor data from an accelerometer sensor component without using any other of the available sensor components 114 to generate the ARRs. However, the raw sensor data for the accelerometer sensor component that is collected by the activity recognition module 118 may be sparse and/or may not have enough information or resolution to generate ARRs that enable activity detection module 116 to determine the user's identified activity with high-accuracy and/or low-latency. As a result, activity detection module 116 may be unable to detect an identified fitness activity and may fail to perform one or more operations for the identified fitness activity, such as recording fitness information for the user's activity. For instance, a 5 minute delay in detecting a user's bike ride may lead to a loss of recording user's biking distance for the initial 5 minutes.
[0035] Activity detection module 116 implements techniques that may improve the accuracy and/or reduce the latency with which activity detection module 116 determines that a user is engaged in an identified fitness activity. Rather than continuously sampling all sensor components all the time (which may consume large amounts of power) or only infrequently sampling a single sensor to detect an identified fitness activity (which may have low accuracy and/or high latency), techniques of the disclosure may upsample a larger set of sensors at a higher rate for a defined period of time if activity detection module 116 determines that a user may have initiated engagement in a fitness activity. In this way, activity detection module 116 may initially sample a smaller set of sensor components at a lower rate to preliminarily detect whether a user has begun a fitness activity, and if it is likely that the user has begun a fitness activity, activity detection module 116 may then upsample a larger set of sensors at a higher rate for a defined period of time to confirm with higher confidence that the user is actually engaged in an identified fitness activity.
[0036] To improve the accuracy and/or reduce the latency for detecting a fitness activity, activity detection module 116 may implement a state machine. The state machine may have multiple states. Each state may cause computing device 110 to perform a set of operations that are particular to the respective state. For instance, activity detection module 116 may implement a state machine, as further described in FIG. 3, which includes three states: a Normal State, an Upsampling State, and an Active State.
[0037] In some examples, activity detection module 116 may initially operate in the Normal State. In some examples, the Normal State may correspond to a state in which the user is not performing a fitness activity. For instance, the user may be walking or still in the Normal State. In the Normal State, activity detection module 116 may receive ARRs from activity recognition module 118 at a “normal rate.” The normal rate may be a pre-defmed rate that is set by a user or hard-coded into activity detection module 116. Examples of normal rates may include receiving one ARR per 30 seconds, one ARR per minute, one ARR per 5 minutes, to name only a few examples. While activity detection module 116 operates in the Normal State, activity detection module 116 may, as described above, apply one or more techniques described above (e.g., averaging or HMM transformations) to a defined quantity of ARRs in order to determine which activity the user is engaged in over a recent period of time. For instance, while operating in the Normal State, activity detection module 116 may perform an HMM transformation on the most recent 30 ARRs that were received once per minute over a 30 minute interval.
[0038] In the Normal State, activity recognition module 118 may generate ARRs based on a “normal state set” of sensor components 122, rather than all of the sensors components available to activity recognition module 118. For instance, a normal state set of sensor components 122 may include an accelerometer sensor component, but may exclude other sensor components available to activity recognition module 118. In this way, while operating in the Normal State, techniques of the disclosure may save power by generating ARRs with relatively fewer sensor components than the Upsampling State and at a relatively lower sampling rate than the Upsampling State.
[0039] Based on applying one or more techniques described above (e.g., averaging or HMM transformations) to a defined quantity of ARRs, activity detection module 116 may determine that the user has transitioned from a non-fitness activity to a fitness activity. For instance, activity detection module 116 may determine, based at least in part on sampling the normal state set of sensor components 122 at the normal rate, an indication that the user has transitioned from a non-fitness activity to a fitness activity.
As an example, activity detection module 116 may store information of the highest probability activity over a past period of time. The highest probability over a past period of time may correspond to a non-fitness activity 112 A, such as remaining still. If the user later transitions to a fitness activity 112B, such as biking, activity detection module 116 may determine, in the Normal State, that the identified user activity is biking. For instance, activity detection module 116 may determine that the highest probability activity has changed from non-fitness activity 112A to fitness activity 112B. In some examples, the probability for the highest probability activity may satisfy a threshold (e.g., greater than the threshold). For instance, the threshold may be equal to the second highest probability, and the probability for the highest probability activity may be greater than the threshold.
[0040] As described above, the indication that the user has transitioned from a nonfitness activity to a fitness activity may be a probability of an activity, such as a fitness activity. In some examples, the indication that the user has transitioned from a nonfitness activity to a fitness activity may be a change in the identified activity, such as from a non-fitness activity to a fitness activity. For instance, activity detection module 116 may receive an ARR that indicates a TILT or ON BICYCLE activity that has the highest probability among probabilities for different possible user activities. In some examples, the indication that the user has transitioned from a non-fitness activity to a fitness activity may be an ARR that indicates an UNKNOWN activity that has the highest probability among probabilities for different possible user activities, which may indicate that additional raw sensor data is need to more accurately determine an identified user activity.
[0041] Activity detection module 116, in response to determining the indication that the user has changed from non-fitness activity 112A to fitness activity 112B, may transition from the Normal State to the Upsampling State. In the Upsampling State, activity detection module 116 may cause computing device 110 to sample an “upsampling state set” of sensor components 120 at a “sensor upsampling” rate. In some examples, the “upsampling state set” of sensor components 120 and/or the “sensor upsampling” rate may be activity-specific. That is, the particular sensor components in the upsampling state set may be different for different activities. The particular sensor upsampling rate for a particular sensor component in the upsampling state set may be different for different activities. In examples where the upsampling state set of sensor components 120 and/or the sensor upsampling rate are activity-specific, activity detection module 116 may, when transitioning from the Normal State to the Upsampling State, store, send, or otherwise use an identifier of the fitness activity detected in the Normal State to select the upsampling state set of sensor components 120 and/or the sensor upsampling rate for the particular fitness activity.
[0042] The upsampling state set of sensor components 120 may include a greater number of sensor components than the normal state set of sensor components 122 as specified by the Normal State. For instance, the upsampling state set of sensor components 120 may include all sensor components available to activity detection module 116, such as sensor components 114 and sensor components 108. In some examples, the upsampling state set of sensor components 120 may include subset of all sensor components available to activity detection module 116 with a cardinality that is greater than the normal state set of sensor components 122. The upsampling state set of sensor components 120 may include different subset of all sensor components available to activity detection module 116 than the normal state set of sensor components 122.
[0043] In some examples, the sensor upsampling rate may be a faster or higher rate than the normal rate specified by the Normal State. By sampling the larger upsampling state set sensor components 120 and at the higher sensor upsampling rate, activity recognition module 118 may generate ARRs at a higher rate, and the ARRs are received by activity detection module 116. By sampling more sensor components at a higher rate, the Upsampling State may result in more ARRs that indicate with greater accuracy which activity the user is engaged in. As such, activity detection module 116 may not have to wait for additional ARRs at the slower normal sampling rate before detecting a fitness activity with sufficient confidence, thereby lowering the latency to detect the fitness activity. As a result, rather than requiring 3-4 minutes of sampling ARRs at the normal rate in a 15 minute run to determine whether a user has engaged in running, techniques of the disclosure may detect that the user is running in a shorter period of time, such as 30 seconds to a minute, as an example. As further described in FIG. 2, in addition to receiving ARRs at a higher rate, activity detection module 116 may receive raw sensor component data to further improve the detection and identification of a particular fitness activity.
[0044] In some examples, activity detection module 116 may operate in the Upsampling State for a defined period of time. The defined period of time may be a hard-coded value, a value set by a user, or a value that dynamically changes. For example, activity detection module 116 may operate in the Upsampling State for a defined period of time of 30 seconds. While operating in the Upsampling State, activity detection module 116 may receive 5 ARR samples in a 30 second interval. As such, activity detection module 116 may receive ARRs at the higher sensor upsampling rate, and the ARRs may be generated by activity recognition module 118 based on the larger upsampling state set of sensor components 120.
[0045] While operating in the Upsampling State, activity detection module 116 may use at least the ARRs generated by activity recognition module 118 during the Upsampling State to determine which activity the user is engaged in over a recent period of time. Activity detection module 116 may, during the Upsampling State, determine respective aggregate probabilities for respective activities using one or more techniques. For instance, activity detection module 116 may determine, for each activity, an average of the probabilities for the activity in each of the ARRs in the set of ARRs. As another example, activity detection module 116 may run a HMM transformation on two or more of the ARRs generated by activity recognition module 118 while operating in the Upsampling State. In some examples, the HMM transformation may indicate which activity the user is engaged in over a recent period of time. For instance, the HMM transformation may indicate which activity the user was engaged in over the longest period of time based on the defined quantity of ARRs. In some examples, the HMM transformation may indicate one or more probabilities for one or more respective activities, where each respective probability indicates a likelihood of a user performing the activity.
[0046] Activity detection module 116 may determine whether a probability for a fitness activity satisfies a threshold (e.g., a probability is greater than, greater than or equal to, less than, less than or equal to, or equal to the threshold). The threshold may be a hardcoded value, a value set by a user, or a value that dynamically changes. In some examples, activity detection module 116 may store or otherwise use different thresholds for different activities. In any case, activity detection module 116, while operating in the Upsampling State, may determine whether a probability for the threshold activity satisfies a threshold. In some examples, if none of the respective probabilities for the respective probabilities satisfies a threshold, then activity detection module 116 may revert operation back to the Normal State.
[0047] In other examples, if none of the respective probabilities for the respective activities satisfies a threshold, activity detection module 116 may remain in the Upsampling State for an additional defined period of time, as described above, that activity detection module 116 operates in the Upsampling State. That is, activity detection module 116 may continue or otherwise repeat operation in the Upsampling State again for the defined period of time. As an example, activity detection module 116 may remain in the Upsampling State for an additional 30 seconds, where 30 seconds is the defined period of time. Activity detection module 116 may remain in the Upsampling State for a defined number of intervals (where the intervals are equal to the defined period of time), if none of the respective probabilities for the respective probabilities satisfies a threshold. If, after the defined number of intervals, none of the respective probabilities for the respective probabilities satisfies a threshold, then activity detection module 116 may revert to operation in the Normal State.
[0048] In some examples, while operating in the Upsampling State, activity detection module 116 may determine that a probability for a fitness activity satisfies a threshold.
As such, activity detection module 116 may determine that it is likely that the user is engaged in the particular fitness activity. Activity detection module 116 may transition to an Active State that is different than the Upsampling State.
[0049] In the Active State, activity detection module 116 may sample an “active state set” of sensor components at an “active sampling” rate. The active state set of sensor components may include a different number of sensor components than the normal state set and/or upsampling state set of sensor components. In some examples, different active state sets of sensor components may correspond to different fitness activities. That is, activity detection module 116 may maintain mappings or other associations between sets of sensors and particular fitness activities. For instance, activity detection module 116 may include a mapping between an ONBICYCLE fitness activity and a set of sensor components that include: a motion sensor, a location sensor (e.g., GPS), temperature sensor, and altitude sensor. Activity detection module 116 may include a separate mapping between an ON_S T ATION ARYB 1K E fitness activity and a set of sensor components that include: a motion sensor but not a location sensor, temperature sensor, and altitude sensor. As such, activity detection module 116 may, when transitioning from the Upsampling State to the Activity State, “back off’ or otherwise stop using one or more sensor components that do not provide information that is relevant or useful for generating fitness information for the particular fitness activity and/or detecting the particular fitness activity.
[0050] Activity detection module 116, when transitioning from the Upsampling State to the Active State, may store, send, or otherwise use an identifier of the fitness activity to select the set of sensors for a particular fitness activity. The identifier may be a predefined identifier for the fitness activity in the set pre-defined indications of activities, such as ON_BICYCLE. In this way, activity detection module 116 may collect data from a set of sensors that are tailored to or are otherwise specific or relevant to the detected fitness activity. In some examples, the active sampling rate when collecting data from one or more of sensors components 114 may be a rate that is different than the normal and/or sensor upsampling rates specified by the Normal State and Upsampling States, respectively. For instance, the active sampling rate may be a rate that is greater than or less than the normal and/or sensor upsampling rates specified by the Normal State and Upsampling States.
[0051] In some examples, activity detection module 116 may collect data from the set of sensors and store the data as fitness information (e.g., fitness information 228 as shown in FIG. 2). Fitness information may include data descriptive of a particular fitness activity. Examples of such data include but are not limited to: time of fitness activity, geographic locations at which user performs the fitness activity, heartrate, number of steps taken by a user, speed or rate of change at which a user is moving, temperature of the user or the environment of the user, altitude or elevation at which the user performs the activity, to name only a few examples of fitness information. In some examples, activity detection module 116 may output the fitness information to the user in a graphical user interface.
In some examples, activity detection module 116 may perform analytics on the fitness information such as determining various statistical metrics including aggregate values, average values, and the like. In some examples, activity detection module 116 may send the fitness information to a remote server that associates the fitness information with a user account of the user. In still other examples, activity detection module 116 may, upon detecting that the user has transitioned into the Active State, may notify one or more third-party applications. For instance, a third-party fitness application may register with activity detection module 116, and the third-party fitness application can record fitness information for a user while activity detection module 116 is operating in the Active State. For example, when activity detection module 116 transitions into and out of the Active State, activity detection module 116 may notify the third-party fitness application.
[0052] In some examples, activity detection module 116 remains in the Active State until activity detection module 116 determines that a change in activity has occurred. For instance, activity detection module 116, while in the Activity State, may continue to receive ARRs from activity recognition module 118. If activity detection module 116 determines, based on one or more ARRs, that the user has changed from a current fitness activity to a different activity, then activity detection module 116 may transition back to the Upsampling State to determine whether the user has actually changed from the current fitness activity to a different activity. In some examples, activity detection module 116 may determine that the user has changed from a current fitness activity to a different activity if the ARR indicates that the highest probability activity in the ARR is different than the current fitness activity for which activity detection module 116 is collecting fitness information in the Active State. In some examples, if activity detection module 116 detects an indication of a different activity than the current fitness activity, then activity detection module 116 may transition to the Upsampling State. Transitions between the Normal, Upsampling, and Active states are further described in FIG. 3.
[0053] FIG. 2 is a block diagram illustrating further details of a computing device 210 that may detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure. Computing device 210 of FIG. 2 is described below as an example of computing device 110 illustrated in FIG. 1. FIG. 2 illustrates only one particular example of computing device 210, and many other examples of computing device 210 may be used in other instances and may include a subset of the components included in example computing device 210 or may include additional components not shown in FIG. 2.
[0054] As shown in the example of FIG. 2, computing device 210 includes presence-sensitive display 212, one or more processors 240, one or more input components 242, one or more communication units 244, one or more output components 246, and one or more storage components 248. Presence-sensitive display (PSD) 212 includes display component 202 and presence-sensitive input component 204. Input components 242 include sensor components 214. Storage components 248 of computing device 210 also include activity detection module 216, activity recognition module 218, application modules 224, sensor processing modules 226, and fitness information datastore 228.
[0055] Communication channels 250 may interconnect each of the components 240, 212, 202,204, 244, 246, 242, 214, 248, 216, 218,224,226, and 228 for inter-component communications (physically, communicatively, and/or operatively). In some examples, communication channels 250 may include a system bus, a network connection, an interprocess communication data structure, or any other method for communicating data.
[0056] One or more input components 242 of computing device 210 may receive input. Examples of input are tactile, audio, and video input. Input components 242 of computing device 210, in one example, includes a presence-sensitive display, touch-sensitive screen, mouse, keyboard, voice responsive system, video camera, microphone or any other type of device for detecting input from a human or machine.
[0057] One or more input components 242 include one or more sensor components 214. Numerous examples of sensor components 214 exist and include any input component configured to obtain environmental information about the circumstances surrounding computing device 210 and/or physiological information that defines the activity state and/or physical well-being of a user of computing device 210. In some examples, a sensor component may be an input component that obtains physical position, movement, and/or location information of computing device 210. For instance, sensor components 214 may include one or more location sensors 214A (GPS components, Wi-Fi components, cellular components), one or more temperature sensors 214B, one or more movement sensors 214C (e.g., accelerometers, gyros), one or more pressure sensors 214D (e.g., barometer), one or more ambient light sensors 214E, and one or more other sensors 214F (e.g., microphone, camera, infrared proximity sensor, hygrometer, and the like). Other sensors may include a heart rate sensor, magnetometer, glucose sensor, hygrometer sensor, olfactory sensor, compass sensor, step counter sensor, to name a few other nonlimiting examples.
[0058] One or more output components 246 of computing device 210 may generate output. Examples of output are tactile, audio, and video output. Output components 246 of computing device 210, in one example, includes a presence-sensitive display, sound card, video graphics adapter card, speaker, cathode ray tube (CRT) monitor, liquid crystal display (LCD), or any other type of device for generating output to a human or machine.
[0059] One or more communication units 244 of computing device 210 may communicate with external devices via one or more wired and/or wireless networks by transmitting and/or receiving network signals on the one or more networks. Examples of communication units 244 include a network interface card (e.g. such as an Ethernet card), an optical transceiver, a radio frequency transceiver, a GPS receiver, or any other type of device that can send and/or receive information. Other examples of communication units 244 may include short wave radios, cellular data radios, wireless network radios, as well as universal serial bus (USB) controllers.
[0060] Presence-sensitive display (PSD) 212 of computing device 200 includes display component 202 and presence-sensitive input component 204. Display component 202 may be a screen at which information is displayed by PSD 212 and presence-sensitive input component 204 may detect an object at and/or near display component 202. As one example range, presence-sensitive input component 204 may detect an object, such as a finger or stylus that is within two inches or less of display component 202. Presence-sensitive input component 204 may determine a location (e.g., an (x,y) coordinate) of display component 202 at which the object was detected. In another example range, presence-sensitive input component 204 may detect an object six inches or less from display component 202 and other ranges are also possible. Presence-sensitive input component 204 may determine the location of display component 202 selected by a user’s finger using capacitive, inductive, and/or optical recognition techniques. In some examples, presence-sensitive input component 204 also provides output to a user using tactile, audio, or video stimuli as described with respect to display component 202. In the example ofiFIG. 2, PSD 212 presents a user interface.
[0061] While illustrated as an internal component of computing device 210, presence-sensitive display 212 may also represent and external component that shares a data path with computing device 210 for transmitting and/or receiving input and output. For instance, in one example, PSD 212 represents a built-in component of computing device 210 located within and physically connected to the external packaging of computing device 210 (e.g., a screen on a mobile phone). In another example, PSD 212 represents an external component of computing device 210 located outside and physically separated from the packaging of computing device 210 (e.g., a monitor, a projector, etc. that shares a wired and/or wireless data path with a tablet computer).
[0062] PSD 212 of computing device 210 may receive tactile input from a user of computing device 110. PSD 212 may receive indications of the tactile input by detecting one or more gestures from a user of computing device 210 (e.g., the user touching or pointing to one or more locations of PSD 212 with a finger or a stylus pen). PSD 212 may present output to a user. PSD 212 may present the output as a graphical user interface, which may be associated with functionality provided by computing device 210. For example, PSD 212 may present various user interfaces of components of a computing platform, operating system, applications, or services executing at or accessible by computing device 210 (e.g., an electronic message application, a navigation application, an Internet browser application, a mobile operating system, etc.). A user may interact with a respective user interface to cause computing devices 210 to perform operations relating to a function.
[0063] PSD 212 of computing device 210 may detect two-dimensional and/or three-dimensional gestures as input from a user of computing device 210. For instance, a sensor of PSD 212 may detect a user's movement (e.g., moving a hand, an arm, a pen, a stylus, etc.) within a threshold distance ofthe sensor of PSD 212. PSD 212 may determine a two or three dimensional vector representation of the movement and correlate the vector representation to a gesture input (e.g., a hand-wave, a pinch, a clap, a pen stroke, etc.) that has multiple dimensions. In other words, PSD 212 can detect a multi-dimension gesture without requiring the user to gesture at or near a screen or surface at which PSD 212 outputs information for display. Instead, PSD 212 can detect a multi-dimensional gesture performed at or near a sensor which may or may not be located near the screen or surface at which PSD 212 outputs information for display.
[0064] One or more processors 240 may implement functionality and/or execute instructions within computing device 210. For example, processors 240 on computing device 210 may receive and execute instructions stored by storage components 248 that execute the functionality of modules 216,218,224,226, and/or 228. The instructions executed by processors 240 may cause computing device 210 to store information within storage components 248 during program execution. Examples of processors 240 include application processors, display controllers, sensor hubs, and any other hardware configure to function as a processing unit. Processors 240 may execute instructions of modules 216, 218, 224, 226, and/or 228 to cause PSD 212 to render portions of content of display data as one of user interface screen shots at PSD 212. That is, modules 216, 218, 224,226, and/or 228 may be operable by processors 240 to perform various actions or functions of computing device 210.
[0065] One or more storage components 248 within computing device 210 may store information for processing during operation of computing device 210 (e.g., computing device 210 may store data accessed by modules 216, 218,224,226, and/or 228 during execution at computing device 210). In some examples, storage component 248 is a temporary memory, meaning that a primary purpose of storage component 248 is not long-term storage. Storage components 248 on computing device 220 may be configured for short-term storage of information as volatile memory and therefore not retain stored contents if powered off. Examples of; volatile memories include random access memories (RAM), dynamic random access memories (DRAM), static random access memories (SRAM), and other forms of volatile memories known in the art.
[0066] Storage components 248, in some examples, also include one or more computer-readable storage media. Storage components 248 may be configured to store larger amounts of information than volatile memory. Storage components 248 may further be configured for long-term storage of information as non-volatile memory space and retain information after power on/off cycles. Examples of non-volatile memories include magnetic hard discs, optical discs, floppy discs, flash memories, or forms of electrically programmable memories (EPROM) or electrically erasable and programmable (EEPROM) memories. Storage components 248 may store program instructions and/or information (e.g., data) associated with modules 216,218,224, 226, and/or 228, as well as data stores 280.
[0067] Application modules 224 represent all the various individual applications and services executing at computing device 210. A user of computing device 210 may interact with an interface (e.g., a graphical user interface) associated with one or more application modules 224 to cause computing device 210 to perform a function.
Numerous examples of application modules 224 may exist and include, a fitness application, a calendar application, a personal assistant or prediction engine, a search application, a map or navigation application, a transportation service application (e.g., a bus or train tracking application), a social media application, a game application, an e-mail application, a messaging application, an Internet browser application, or any and all other applications that may execute at computing device 210. Although shown separately from application modules 224, activity detection module 216 and/or activity recognition module 218 may be included within one or more of application modules 224 (e.g., included within a fitness application).
[0068] As shown in FIG. 2, computing device 210 may include sensor processing modules 226. In some examples, sensor processing modules 226 may receive outputs from sensor components 214 and generate raw sensor component data that represents the outputs. For instance, each of sensor components 214 may have a corresponding sensor processing module. As an example, a sensor processing module for location sensor component 214A may generate GPS coordinate values in raw sensor component data (e.g., objects), where the GPS coordinates are based on hardware outputs of location sensor component 214A. As another example, a sensor processing module for movement sensor component 214C may generate motion and/or acceleration values along different axes of a coordinate system in raw sensor component data, where the motion and/or acceleration values are based on hardware outputs of movement sensor component 214C. Activity recognition module 218 and/or activity detection module 216 may receive the raw sensor component data and further process the data. For instance, activity recognition module 218 may receive raw sensor component data from sensor processing modules 226 and generate ARRs based on the raw sensor component data. Activity detection module 216 may receive raw sensor component data from sensor processing modules 226 to improve the accuracy of detecting the activity in which the user is engaged.
[0069] In FIG. 2, activity detection module 216 may detect, based at least in part on sampling a first set of a plurality of sensor components 214 at a first rate, an indication that the user of computing device 210 has initiated a fitness activity, wherein computing device 210 stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities. Responsive to detecting the indication that the user has initiated the fitness activity, computing device 210 may sample, in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensor components 214 to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensor components includes different sensor components than the first set of the plurality of sensors. Responsive to determining that the probability satisfies a threshold, activity detection module 216 and/or one or more of application modules 224 may collect, in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensor components 214 that corresponds to a predefined identifier for the fitness activity in the set pre-defined indications of activities.
[0070] As described in FIG. 1, in addition to receiving and/or sampling ARRs at a higher rate in the Upsampling State, activity detection module 216 may receive raw sensor component data to further improve the detection and identification of a particular fitness activity. For instance, activity detection module 216 may receive raw sensor component data from sensor processing modules 226. As an example, activity detection module 216 may receive GPS coordinates and/or a speed from a sensor processing module 226 for location sensor component 214A and may receive a set of motion and/or acceleration values indicating motions and/or accelerations along different axes of a coordinate system (e.g., x, y, and z). Activity detection module 216 may use the raw sensor component data to improve the accuracy of activity detection performed by activity detection module 216. For instance, if activity detection module 216 determines, using HMM or other suitable techniques, that a most probable activity is ON_BICYCLE, but the detected speed is 75 miles per hour, then activity detection module 216 may determine that the user is engaged in the IN_VEHICLE activity instead. That is, if activity detection module 216 detects an anomaly for a fitness activity based on the raw sensor component data, activity detection module 216 may determine the activity engaged in by the user based at least in part on the anomaly. In some examples, activity detection module 216 may apply HMM or other suitable techniques as well to the raw sensor component data to determine a set of probabilities for respective activities. In some examples, the set of probabilities for respective activities based on the raw sensor component data may be combined or otherwise used with the probabilities for the respective activities that are based on applying HMM transformations or other suitable techniques to the ARRs.
[0071] In some examples, activity detection module 216 may maintain one or more statistics for how often and/or how much upsampling has been performed by sensor components 214. For instance, activity detection module 216 may maintain or store one or more statistics over a defined period of time, such as hourly, daily, or weekly. In some examples, the statistic may be the total time activity detection module spends in the Upsampling State. In some examples, activity detection module 216 may maintain or store one or more statistics for each sensor component. For instance, activity detection module 216 may store the total amount of time a particular sensor component has been upsampling at the upsampling rate. Activity detection module 216 may store the total amount of batter power consumed by a particular sensor component. The total amount of battery power consumed by a particular sensor component may be the total amount of battery consumption while the sensor component is operating in the Upsampling State.
[0072] In some examples, if activity detection module 216 determines that the total amount of batter power consumption for a particular sensor over a defined period of time exceeds a threshold, then activity detection module 216 may not activate the particular sensor component when transitioning from the Normal State to the Upsampling State. In some examples, if the total amount of time that a particular sensor component has been operating in the upsampling state exceeds a threshold, then activity detection module 216 may not activate the particular sensor component when transitioning from the Normal State to the Upsampling State. In some examples, the threshold may represent power consumption or time quotas. As such, activity detection module 216 may enforce power consumption and/or time quotas on a per defined-time period basis (e.g., per day). Once the quota for a particular sensor component is reached, the sensor component will not be upsampled at the upsampling rate for the remainder of the defined time period.
[0073] In some examples, activity detection module 216, when operating in the Active State, may use a backoff technique to improve power consumption by reducing the sampling rate of one or more particular sensor components. For instance, a particular activity may be associated with a set of particular sensor components by activity detection module 216. As described in FIG. 1, while operating initially in the Active State, activity detection module 216 may sample an “active state set” of sensor components at an “active sampling” rate. In some examples, activity detection module 216 may decrease the active sampling rate for a particular sensor of the active state set of sensor components over time. For instance, activity detection module 216 may decrease the active sampling rate in a linear, geometric, exponential or other rate of change. Activity detection module 216 may decrease the active sampling rate if the raw sensor component data does not change over a defined period of time (e.g., location is not changing while in Active State because user is running on a treadmill). For example, a user may participate in a 5 hour bike ride. Continuously recording GPS location in the Active State for the user during the 5 hour ride may be battery intensive and drain the battery. Accordingly, activity detection module 216 may initiate higher frequency sampling for the first one hour, followed by a lower frequency sampling for each subsequent hour of the bicycle ride. In this way, activity detection module 216 may provide smoother degradation of the data metrics for the longer-term activities.
[0074] As described in FIG. 1, in some examples, computing device 210 may receive information from wearable computing device 100, such as ARRs, raw sensor component data, and any other information that may be created or modified by wearable computing device 100. In some examples, activity detection module 216 may send one or more instructions to wearable computing device 100 that cause wearable computing device 100 to perform functions described with respect to activity detection module 116 and 216.
For instance, activity detection module 216 may send one or more instructions to wearable computing device 100 that cause wearable computing device to operate in and/or transition between a Normal State, Upsampling State, and Active State, as described in this disclosure. For example, activity detection module 216 may send one or more instructions to wearable computing device 100 that cause wearable computing device 100 to operate in the same operating state as computing device 210. As such, if activity detection module 216 causes a transition from one state to another, activity detection module 216 may send one or more instructions that cause wearable computing device 100 to perform the same state transition.
[0075] In some examples, if activity detection module 216 determines that each of wearable computing device 100 and computing device 210 include the same specific type of sensor component, activity detection module 216 may cause a sensor component of the specific type to sample at only one of either wearable computing device 100 or computing device 210. Activity detection module 216 may, as another example, cause wearable computing device 100 to apply a backoff technique to improve power consumption at wearable computing device 100 by reducing the sampling rate of one or more particular sensor components of wearable computing device 100.
[0076] FIG. 3 illustrates an example state machine 300 that may be implemented at a computing device to detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure. In some examples, state machine 300 may be implemented in an activity detection module, such as activity detection module 116 and/or 216 as illustrated in FIGS. 1-2. State machine 300 may be implemented as a combination of software and/or hardware in a computing device, such as computing device 110 or 210 and/or wearable computing device 100. For example purposes in FIG. 3, state machine 300 may be implemented in activity detection module 116 of computing device 110, as previously described in FIG. 1.
[0077] In the example of FIG. 3, activity detection module 116 may initially operate in the Normal State 306 of state machine 300. For instance, the user may be standing still. Activity detection module 116 may receive ARRs from activity recognition module 118 at a “normal rate” of 1 ARR per minute. As described in FIG. 1, the normal rate may be a pre-defined rate that is set by a user, hard-coded into activity detection module 116, or dynamically updated. While activity detection module 116 operates in the Normal State, activity detection module 116 may perform an HMM transformation on the most recent 30 ARRs that were received once per minute over a 30 minute interval. As described in FIG. 1, in the Normal State, activity recognition module 118 may generate ARRs based on a “normal state set” of sensor components 122, rather than all of the sensors components available to activity recognition module 118.
[0078] Activity detection module 116 may later determine that the user has transitioned from a non-fitness activity to a fitness activity. As an example, activity detection module 116 may determine, based at least in part on sampling the normal state set of sensor components at the normal rate, an indication that the user has transitioned from a nonfitness activity to a fitness activity. For example, activity detection module 116 may determine, based on an HMM transformation or other suitable technique, that the user has potentially changed from an activity in the Normal State (e.g., a non-fitness activity) to a fitness activity, such as bicycling. For instance, the highest probability activity from the HMM transformation change from standing still to bicycling. Activity detection module 116 may detect this change from a non-fitness to a fitness activity, which may trigger a state transition 308 to Upsampling State 304.
[0079] In Upsampling State 304, activity detection module 116 may cause computing device 110 to sample an “upsampling state set” of sensor components at a “sensor upsampling” rate. The upsampling state set of sensor components may include a greater or different number of sensor components than the normal state set of sensor components as specified by the Normal State. In FIG. 3, while operating in the upsampling state 304, activity detection module 116 may sample five ARRs in a 30 second interval. Each of the ARRs may be generated based on the larger upsampling state set of sensors components, such that the ARRs may more accurately indicate the activity presently engaged in by the user.
[0080] In some examples, activity detection module 116 may operate in Upsampling State 304 for a defined period of time, as described in FIG. 1. While operating in the Upsampling State 304, activity detection module 116 may use at least the ARRs generated by activity recognition module 118 during Upsampling State 304 to determine which activity the user is engaged in over a recent period of time. In FIG. 3, activity detection module 116 may run a HMM transformation on two or more of the ARRs generated by activity recognition module 118 while operating in Upsampling State 304. For instance, the HMM transformation may indicate one or more probabilities for one or more respective activities, where each respective probability indicates a likelihood of a user performing the activity.
[0081] In Upsampling State 304, activity detection module 116 may determine whether a probability for a fitness activity satisfies a threshold. If none of the respective probabilities for the respective activities satisfies a threshold within a defined period of time, activity detection module 116 may remain in the Upsampling State for an additional defined period of time. That is, none of the respective probabilities for the respective activities satisfies a threshold within a defined period of time, activity detection module 116 may trigger a state transition 312 back to Upsampling State 304. For instance, if none of the respective probabilities for the respective activities satisfies a threshold within a defined period of time, activity detection module 116 may have a low confidence of the actual activity, and therefore continue operating in Upsampling State 304 to determine the actual activity engaged in by the user. In some examples, activity detection module 116 may perform a defined number of state transitions 312 (in some examples, a defined number of consecutive state transitions), and if none of the respective probabilities for the respective activities satisfies a threshold, then activity detection module 116 may transition back to Normal State 306.
[0082] In some examples, while in Upsampling State 304, activity detection module 116 may determine, using HMM transformations or other suitable techniques, that the user is engaged in a non-fitness activity. For instance, in Upsampling State 304, activity detection module 116 may determine that the highest probability activity is a non-fitness activity. Accordingly, activity detection module 116 may perform a state transition 318 in which activity detection module 116 transitions from Upsampling State 304 back to Normal State 306 based on detecting the non-fitness activity.
[0083] In some examples, while in Upsampling State 304, activity detection module 116 may determine, using HMM transformations or other suitable techniques, that the user is engaged in an unknown activity. For instance, in Upsampling State 304, activity detection module 116 may determine that the highest probability activity is the UNKNOWN activity from the set of pre-defmed identifiers. In such examples, activity detection module 116 may perform a state transition 318 to Normal State 306. Activity detection module 116 may also “blacklist” the activity previously detected by activity detection module 116 while operating in Normal State 306 prior to state transition 308. That is, if activity detection module 116 detected a fitness activity RUNNING, which caused state transition 308, and activity detection module determined the highest probability activity in Upsampling State 304 to be UNKNOWN, then activity detection module 116 may blacklist the RUNNING activity for a defined period of time. Blacklisting a particular activity may cause activity detection module 116 to refrain from transitioning to Upsampling State 304 for a defined period of time, although activity detection module 116 otherwise detects the particular activity. In this way, if activity detection module 116 repeatedly detects a particular activity in Normal State 306 that is determined to be UNKNOWN in Upsampling State 304, then activity detection module 116 may refrain from entering the Upsampling State 304 to avoid unnecessarily consuming additional power to determine that the activity is UNKNOWN. After the defined period of time (e.g., the activity is no longer blacklisted), if activity detection module 116 detects the particular activity in Normal State 306 that was previously determined to be UNKNOWN in Upsampling State 304, then activity detection module 116 may again perform state transition 308 to Upsampling State 304.
[0084] In some examples, activity detection module 116 may progressively increase the defined period of time for blacklisting an activity, as the activity is consecutively detected without detecting a different activity. For instance, if the same blacklisted activity is detected by activity detection module 116 multiple, consecutive times, activity detection module may increase the defined period of time by a particular amount of time. For instance, each time the same blacklisted activity is consecutively detected, activity detection module 116 may increase the defined period of time by 5 additional minutes for blacklisting.
[0085] In some examples, while operating in Upsampling State 304, activity detection module 116 may determine that a probability for a fitness activity satisfies a threshold.
As such, activity detection module 116 may determine that it is likely that the user is engaged in the particular fitness activity. Activity detection module 116 may perform a transition 310 from Upsampling State 304 to a different Active State 302. In Active State 302, activity detection module 116 may sample an active state set of sensor components at an active sampling rate. The active state set of sensor components may include a different number of sensor components than the normal state set and/or upsampling state set of sensor components. For instance, in Active State 302, computing device 110 may collect GPS and heartrate data. In Active State 302, computing device 110 may determine change in location as well as distance traveled. The active sampling rate when collecting data from one or more sensor components may be a rate that is different than the normal and/or sensor upsampling rates specified by Normal State 306 and Upsampling State 304.
[0086] Activity detection module 116, when transitioning from the Upsampling State to Active State 302, may store, send, or otherwise use an identifier of the fitness activity to select the set of sensors for a particular fitness activity. Activity detection module 116 may use the identifier of the fitness activity to collect data from a set of sensors that are tailored to or are otherwise specific or relevant to the detected fitness activity.
[0087] Activity detection module 116 may remain in Active State 302 until activity detection module 116 determines that a change in activity has occurred. For instance, activity detection module 116, while in Active State 302, may continue to receive ARRs from activity recognition module 118. If activity detection module 116 determines, based on one or more ARRs, that the fitness activity remains the same, then activity detection module 116 may perform a state transition 314 to stay in active state 302. That is, activity detection module 116 may remain in Active State 302 and not transition to a state different than Active State 302. If activity detection module 116 determines, based on one or more ARRs, that the fitness activity has changed, then activity detection module 116 may perform a state transition 316 to Upsampling State 304. That is, activity detection module 116 may remain begin operating in Upsampling State 304.
[0088] In some examples, while operating in Active State 302, activity detection module 116 may determine, based on one or more ARRs processed by activity detection module 116 in Active State 302, that the user has been inactive for a defined period of time. For instance, activity detection module 116 may have been operating in Active State 302 because the user was engaged in a fitness activity, such as bicycling. Flowever, activity detection module 116 may have later detected that the user is inactive, e.g., the user is no longer engaged in an activity. As an example, the user may have dismounted from the bicycle and set computing device 110 on a stationary surface such as a table. Rather than transitioning back to upsampling state 304, activity detection module 116 may perform a state transition 320 back to normal state 306. In this way, activity detection module 116 may save power that would otherwise have been unnecessarily consumed in Upsampling State 304 because computing device 110 is on the stationary surface (e.g., there is no activity to detect because computing device 110 determines the user to be inactive).
[0089] In some examples, while activity detection module 116 operates in the Normal State, activity detection module 116 may perform an HMM transformation ARRs. As described in FIG. 1, in the Normal State, activity recognition module 118 may generate ARRs based on a “normal state set” of sensor components 122, rather than all of the sensors components available to activity recognition module 118. Activity detection module 116 may store at least a high confidence threshold and a moderate confidence threshold, where the high confidence threshold is greater than the moderate confidence threshold. If activity detection module 116 determines, based on the HMM transformations or other suitable techniques, that a fitness activity has a probability greater than the high confidence threshold, then activity detection module 116 may perform a state transition 322 directly to active state 302. As such, activity detection module 116 may bypass Upsampling State 304, which may save power. Activity detection module 116, when transitioning from Normal State 306 directly to Active State 302, may store, send, or otherwise use an identifier of the fitness activity. Activity detection module 116 may use the identifier of the fitness activity, in Active State 302, to collect data from a set of sensors that are tailored to or are otherwise specific or relevant to the detected fitness activity.
[0090] FIG. 4 includes an example timeline 400 that illustrates sampling rates for detecting a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure. For example purposes in FIG. 4, timeline 400 is described in the context of an activity detection module of computing device 416, which may be an example of computing device 110 or 210 as described in FIGS. 1-2. In the example of FIG. 4, the activity detection module may initially operate in a Normal State. For instance, the user may be standing still. The activity detection module may receive ARRs from an activity recognition module at a “normal rate” 402 of 1 ARR per minute.
[0091] While the activity detection module operates in the Normal State, the activity detection module may perform an HMM transformation on a most recent n-number of ARRs that were received once per minute. The activity detection module of computing device 416 may detect that the user is engaged in an activity STILL 412A because the user remains still. The STILL activity may have a pre-defined identifier in the activity detection module. The activity detection module may later determine that the user has transitioned from a non-fitness activity 412A to a fitness activity 412B, such as ON BICYCLE. For example, the activity detection module may determine, based on an HMM transformation or other suitable technique, that the user has potentially changed from an activity STILL 412A in the Normal State (e.g., a non-fitness activity) to a fitness activity 412B ON_BICYCLE.
[0092] In the Upsampling State, the activity detection module may cause computing device 416 to sample an “upsampling state set” of sensor components at a “sensor upsampling” rate 404. In FIG. 4, while operating in the Upsampling State, the activity detection module may sample an ARR every three seconds for a one minute interval.
Each of the ARRs may be generated based on the larger upsampling state set of sensors components, such that the ARRs may more accurately indicate the activity presently engaged in by the user.
[0093] In the Upsampling State, the activity detection module may determine whether a probability for a fitness activity satisfies a threshold. In some examples, the activity detection module may operate at the upsampling rate 404 for a defined period of time, and if none of a set of respective probabilities for the respective activities satisfies a threshold, the activity detection module may transition back to the Normal State. In some examples, if the activity detection module determines that the user is engaged in a nonfitness activity, the activity detection module may transition back to the Normal State.
[0094] In some examples, while operating in the Upsampling State, the activity detection module may determine that a probability for fitness activity 412B satisfies a threshold. The activity detection module may determine that it is likely that the user is engaged in the particular fitness activity 412B. In the Active State, the activity detection module may sample an active state set of sensor components at an active sampling rate 406. For instance, the active sampling rate 406 may be one sample every 30 seconds while in the Active State. The active state set of sensor components may include a different number of sensor components than the normal state set and/or upsampling state set of sensor components. The active sampling rate 406, when collecting data from one or more sensor components, may be a rate that is different than the normal sampling rate 402 and/or the sensor upsampling rate 404 specified by the Normal State and the Upsampling State.
[0095] FIG. 5 is a flow diagram illustrating example operations of a computing device that may detect a fitness activity with lower latency and/or greater accuracy by upsampling one or more sensors, in accordance with one or more aspects of the present disclosure. For purposes of illustration only, the example operations are described below within the context of computing device 110 of FIG. 1. In some examples, activity detection module 116 may perform the techniques of FIG. 5.
[0096] In FIG. 5, computing device 110 may initially operate in the Normal State. Computing device 110 may sample (500) ARRs at a “normal rate.” For example, computing device 110 may sample a first set of sensors of at the normal rate. In the Normal State, computing device 110 may generate and/or receive ARRs based on a “normal state set” of sensor components, rather than all of the sensors components included in and/or available to computing device 110. For instance, a normal state set of sensor components may include an accelerometer sensor component, but may exclude other sensor components available to computing device 110.
[0097] While computing device 110 operates in the Normal State, computing device 110 may perform HMM transformations or other suitable techniques on the one or more ARRs to detect the activity engaged in by the user. In the Normal State, computing device 110 may generate ARRs based on the “normal state set” of sensor components. Based on applying one or more techniques to a defined quantity of ARRs, computing device 110 may determine (502) whether the user has transitioned from a non-fitness activity to a fitness activity. As an example, computing device 110 may detect an indication that the user has initiated a fitness activity. In some examples, computing device 110 may not detect, based at least in part on sampling the normal state set of sensor components at the normal rate, an indication that the user has transitioned from a non-fitness activity to a fitness activity (506). Accordingly, computing device 110 may continue sampling at the normal rate with the normal state set of sensor components.
[0098] In some examples, computing device 110 may detect, based at least in part on sampling the normal state set of sensor components at the normal rate, an indication that the user has transitioned from a non-fitness activity to a fitness activity (504).
Computing device 110, in response to determining the indication that the user has changed from non-fitness activity to fitness activity, may transition from the Normal State to the Upsampling State. In the Upsampling State, computing device 110 may sample (508) an “upsampling state set” of sensor components at a “sensor upsampling” rate. The upsampling state set of sensor components may include a greater number of sensor components than the normal state set of sensor components as specified by the Normal State. In some examples, the upsampling state set of sensor components may include different subset of all sensor components available to and/or included in computing device 110 than the normal state set of sensor components.
[0099] As described in FIG. 1, while operating in the Upsampling State, computing device 110 may use at least the ARRs generated during the Upsampling State to determine which activity the user is engaged in over a recent period of time. In some examples, one or more HMM transformations performed on the ARRs may indicate one or more probabilities for one or more respective activities, where each respective probability indicates a likelihood of a user performing the activity. Activity detection module 116 may determine whether a probability for a fitness activity satisfies a threshold (e.g., a probability is greater than, greater than or equal to, less than, less than or equal to, or equal to the threshold) (510). In some examples, if none of the respective probabilities for the respective probabilities satisfies a threshold (514), then computing device 110 may revert operation back to the Normal State of operation (500).
[0100] In some examples, while operating in the Upsampling State, computing device 110 may determine that a probability for a fitness activity satisfies a threshold (512). As such, computing device 110 may determine that it is likely that the user is engaged in the particular fitness activity. Computing device 110 may transition to an Active State that is different than the Upsampling State. In the Active State, computing device may sample an “active state set” of sensor components at an “active sampling” rate. The active state set of sensor components may include a different number of sensor components than the normal state set and/or upsampling state set of sensor components.
[0101] Computing device 110 may collect (516) data from a set of sensors that are tailored to or are otherwise specific or relevant to the detected fitness activity. In some examples, the active sampling rate when collecting data from one or more of sensors components, may be a rate that is different than the normal and/or sensor upsampling rates specified by the Normal State and Upsampling States, respectively. For instance, the active sampling rate may be a rate that is greater than or less than the normal and/or sensor upsampling rates specified by the Normal State and Upsampling States.
[0102] In some examples, techniques of the disclosure implementing sensor upsampling may reduce false positives and/or allows a computing device to resolve a user's activity with higher accuracy and lower latency. The additional sensor data may also consumed by the underlying activity recognition module, which may help improve the activity recognition accuracy as well. A high accuracy and low latency activity detection module may improve a computing device’s collection of fitness information for activities like running or biking, without requiring a user to explicitly instruct an the computing device that the user has started/stopped a fitness activity.
[0103] Example 1: A method comprising detecting, by a computing device of a user and based at least in part on sampling a first set of a plurality of sensors of the computing device at a first rate, an indication that the user has initiated a fitness activity, wherein the computing device stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities; responsive to detecting the indication that the user has initiated the fitness activity, sampling, by the computing device in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors; and responsive to determining that the probability satisfies a threshold, collecting, by the computing device in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a predefined identifier for the fitness activity in the set of pre-defined indications of activities.
[0104] Example 2: The method of Example 1, wherein the computing device detects the indication that the user has initiated the fitness activity in a normal operational state, wherein the method further comprises: determining, by the computing device, the predefined identifier for the fitness activity; and determining, by the computing device, the threshold based at least in part on the pre-defined identifier for the fitness activity.
[0105] Example 3: The method of any of Examples 1-2, wherein the computing device consumes more power when operating in the upsampling operational state than in either of the normal operational state or the active operational state.
[0106] Example 4: The method of any of Examples 1-3, further comprising: determining, by the computing device while operating in a normal operational state, the pre-defined identifier for the fitness activity; and determining, by the computing device and based at least in part on the pre-defined identifier for the fitness activity, at least one of the second rate for the upsampling operational state or the second set of the plurality of sensors for the upsampling operational state.
[0107] Example 5: The method of any of Examples 1-4, further comprising: determining, by the computing device while operating in a normal operational state, the pre-defined identifier for the fitness activity; and determining, by the computing device and based at least in part on the pre-defined identifier for the fitness activity, at least one of a third rate of sampling the particular set of the plurality of sensors for the active operational state or the particular set of the plurality of sensors for the active operational state.
[0108] Example 6: The method of any of Examples 1-5, further comprising: determining, by the computing device while operating in the active operational state, that values generated by at least one sensor of the particular set of the plurality of sensors that corresponds to the pre-defined identifier have not changed for a defined period of time; and decreasing, by the computing device and in response to determining that the values have not changed for the defined period of time, a third rate of sampling the at least one sensor.
[0109] Example 7: The method of any of Examples 1-6, wherein the fitness activity is a first fitness activity, further comprising: generating, by the computing device while operating in the upsampling operational state, activity recognition results (ARRs) based at least in part on raw sensor component data from the second set of the plurality of sensors, wherein at least one of the ARRs indicates the probability for the first fitness activity; detecting, by the computing device and in the raw sensor component data, an anomaly for a second fitness activity; and selecting, by the computing device, based at least in part on the at least one of the ARRs and the anomaly in the raw sensor component data, the first fitness activity, wherein a probability of the second fitness activity is greater than the probability for the first fitness activity.
[0110] Example 8: The method of any of Examples 1-7, further comprising: prior to detecting the indication that the user has initiated the fitness activity, determining, by the computing device, a first pre-defined identifier of an activity engaged in by the user while the computing device is operating in the normal operational state; responsive to detecting the indication that the user has initiated the fitness activity, determining, by the computing device while operating in the upsampling operational state, that an unknown activity is associated with a highest probability in a set of probabilities associated with the set pre-defmed indications of activities; blacklisting, by the computing device and for a pre-defined period of time, the first pre-defined identifier of the activity; and responsive to detecting a second pre-defmed identifier of an activity engaged in by the user in the normal operational state, refraining, while the pre-defmed identifier of the activity is blacklisted, from operating in the upsampling operational state, wherein the first and second pre-defined identifiers are the same.
[0111] Example 9: The method of any of Examples 1-8, further comprising, increasing the pre-defined period of time for each consecutive determination by the computing device that the unknown activity is associated with the highest probability in the set of probabilities associated with the set pre-defined indications of activities.
[0112] Example 10: The method of any of Examples 1-9, further comprising: storing, by the computing device, a battery usage statistic that indicates an amount of power consumed, during the upsampling operational state, by at least one sensor of the plurality of sensors; and responsive to determining that the at least one battery usage statistic satisfies a threshold, refraining, by the computing device, from sampling the at least one sensor at the second rate in response to detecting the indication that the user has initiated the fitness activity.
[0113] Example 11: The method of any of Examples 1-10, where the threshold is a first threshold and the probability is a first probability, the method further comprising: responsive to detecting, while operating in the normal operational state, that a second probability of the fitness activity is greater than a second threshold, changing operation of the computing device directly to the active operational state from the normal operational state without transitioning to the upsampling operational state, wherein the second threshold is greater than the first threshold.
[0114] Example 12: The method of any of Examples 1-11, further comprising: responsive to detecting, while in the active operational state, that the user has changed from the fitness activity to a different activity, changing operation of the computing device from the active operational state to the upsampling operational state.
[0115] Example 13: The method of any of Examples 1-12, further comprising: responsive to detecting the indication that the user has initiated the fitness activity, sending, by the computing device and to a wearable computing device, one or more instructions that cause the wearable computing device to sample a third set of sensors of the wearable computing device at the second rate; and receiving, by the computing device and from the wearable computing device, information from the wearable computing device that is based at least in part on raw sensor component data generated by the wearable computing device at the second rate.
[0116] Example 14: The method of any of Examples 1-13, further comprising: responsive to determining that the wearable computing device includes at least one sensor of the same type as at least one sensor of the second set of the plurality of sensors, sending, by the computing device and to the wearable computing device, one or more instructions that cause the wearable computing device to refrain from sampling the at least one sensor of the wearable computing device at the second rate.
[0117] Example 15: The method of any of Examples 1-14, wherein the indication that the user has initiated the fitness activity is based at least in part on receiving information from a wearable computing device, wherein the information from the wearable computing device is based at least in part on raw sensor component data generated by the wearable computing device.
[0118] Example 16: A non-transitory computer-readable storage medium encoded with instructions that, when executed, cause at least one processor of a computing device for a user to: detect, based at least in part on sampling a first set of a plurality of sensors of the computing device at a first rate, an indication that the user has initiated a fitness activity, wherein the computing device stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities; responsive to detecting the indication that the user has initiated the fitness activity, sample, in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors; and responsive to determining that the probability satisfies a threshold, collect, in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defmed identifier for the fitness activity in the set pre-defined indications of activities.
[0119] Example 17: The non-transitory computer-readable storage medium of Example 16 encoded with instructions that, when executed, cause at least one processor of the computing device to: determine, while operating in a normal operational state, the predefined identifier for the fitness activity; and determine, based at least in part on the predefined identifier for the fitness activity, at least one of the second rate for the upsampling operational state or the second set of the plurality of sensors for the upsampling operational state.
[0120] Example 18: The non-transitory computer-readable storage medium of any of Examples 16 or 17, wherein the computing device consumes more power when operating in the upsampling operational state than in either of the normal operational state or the active operational state.
[0121] Example 19: A non-transitory computer-readable storage medium encoded with instructions that, when executed, cause at least one processor of a computing device for a user to perform any of Examples 2-15.
[0122] Example 20: A computing device comprising: one or more computer processors; a plurality of sensors operably coupled to the one or more computer processors; and a memory comprising instructions that when executed by the one or more computer processors cause the one or more computer processors to: detect, based at least in part on sampling a first set of the plurality of sensors of the computing device at a first rate, an indication that a user of the computing device has initiated a fitness activity, wherein the computing device stores pre-defined identifiers of non-fitness and fitness activities in a set of pre-defined indications of activities; responsive to detecting the indication that the user has initiated the fitness activity, sample, by the computing device in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors; and responsive to determining that the probability satisfies a threshold, collect, by the computing device in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defined identifier for the fitness activity in the set of pre-defined indications of activities.
[0123] Example 21: The computing device of Example 20, wherein the memory comprises instructions that when executed by the one or more computer processors cause the one or more computer processors to: determine, while operating in a normal operational state, the pre-defined identifier for the fitness activity; and determine, based at least in part on the pie-defined identifier for the fitness activity, at least one of the second rate for the upsampling operational state or the second set of the plurality of sensors for the upsampling operational state.
[0124] Example 22: A computing device comprising: one or more computer processors; a plurality of sensors operably coupled to the one or more computer processors; and a memory comprising instructions that when executed by the one or more computer processors cause the one or more computer processors to perform any of the methods of Examples 2-15.
[0125] Example 23: An apparatus comprising: means for detecting, based at least in part on sampling a first set of a plurality of sensors of the computing device at a first rate, an indication that a user of the apparatus has initiated a fitness activity, wherein the apparatus stores pre-defined identifiers of non-fitness and fitness activities in a set of predefined indications of activities; responsive to detecting the indication that the user has initiated the fitness activity, sampling, by the apparatus in an upsampling operational state, at a second rate that is greater than the first rate, a second set of the plurality of sensors to determine a probability that the user is engaged in the fitness activity, wherein the second set of the plurality of sensors includes different sensors than the first set of the plurality of sensors; and responsive to determining that the probability satisfies a threshold, collecting, by the apparatus in an active operational state that is different than the upsampling operational state, sensor data for the fitness activity using a particular set of the plurality of sensors that corresponds to a pre-defined identifier for the fitness activity in the set pre-defined indications of activities.
[0126] Example 24: The apparatus of claim 21 comprising means for performing any of the methods of Examples 2-15.
[0127] In one or more examples, the functions described may be implemented in hardware, software, firmware, or any combination thereof. If implemented in software, the functions may be stored on or transmitted over, as one or more instructions or code, a computer-readable medium and executed by a hardware-based processing unit. Computer-readable media may include computer-readable storage media, which corresponds to a tangible medium such as data storage media, or communication media including any medium that facilitates transfer of a computer program from one place to another, e.g., according to a communication protocol. In this manner, computer-readable media generally may correspond to (1) tangible computer-readable storage media, which is non-transitory or (2) a communication medium such as a signal or carrier wave. Data storage media may be any available media that can be accessed by one or more computers or one or more processors to retrieve instructions, code and/or data structures for implementation of the techniques described in this disclosure. A computer program product may include a computer-readable medium.
[0128] By way of example, and not limitation, such computer-readable storage media can comprise RAM, ROM, EEPROM, CD-ROM or other optical disk storage, magnetic disk storage, or other magnetic storage devices, flash memory, or any other medium that can be used to store desired program code in the form of instructions or data structures and that can be accessed by a computer. Also, any connection is properly termed a computer-readable medium. For example, if instructions are transmitted from a website, server, or other remote source using a coaxial cable, fiber optic cable, twisted pair, digital subscriber line (DSL), or wireless technologies such as infrared, radio, and microwave, then the coaxial cable, fiber optic cable, twisted pair, DSL, or wireless technologies such as infrared, radio, and microwave are included in the definition of medium. It should be understood, however, that computer-readable storage media and data storage media do not include connections, carrier waves, signals, or other transient media, but are instead directed to non-transient, tangible storage media. Disk and disc, as used, includes compact disc (CD), laser disc, optical disc, digital versatile disc (DVD), floppy disk and Blu-ray disc, where disks usually reproduce data magnetically, while discs reproduce data optically with lasers. Combinations of the above should also be included within the scope of computer-readable media.
[0129] Instructions may be executed by one or more processors, such as one or more digital signal processors (DSPs), general purpose microprocessors, application specific integrated circuits (ASICs), field programmable logic arrays (FPGAs), or other equivalent integrated or discrete logic circuitry. Accordingly, the term “processor,” as used may refer to any of the foregoing structure or any other structure suitable for implementation of the techniques described. In addition, in some aspects, the functionality described may be provided within dedicated hardware and/or software modules. Also, the techniques could be fully implemented in one or more circuits or logic elements.
[0130] The techniques of this disclosure may be implemented in a wide variety of devices or apparatuses, including a wireless handset, an integrated circuit (IC) or a set of ICs (e.g., a chip set). Various components, modules, or units are described in this disclosure to emphasize functional aspects of devices configured to perform the disclosed techniques, but do not necessarily require realization by different hardware units. Rather, as described above, various units may be combined in a hardware unit or provided by a collection of interoperative hardware units, including one or more processors as described above, in conjunction with suitable software and/or firmware.
[0131] It is to be recognized that depending on the embodiment, certain acts or events of any of the methods described herein can be performed in a different sequence, may be added, merged, or left out all together (e.g., not all described acts or events are necessary for the practice of the method). Moreover, in certain embodiments, acts or events may be performed concurrently, e.g., through multi-threaded processing, interrupt processing, or multiple processors, rather than sequentially.
[0132] In some examples, a computer-readable storage medium includes a non-transitory medium. In some examples, the term “non-transitory” indicates that the storage medium is not embodied in a carrier wave or a propagated signal. In certain examples, a non-transitory storage medium may store data that can, over time, change (e.g., in RAM or cache). Although certain examples are described as outputting various information for display, techniques of the disclosure may output such information in other forms, such as audio, holographical, or haptic forms, to name only a few examples, in accordance with techniques of the disclosure.
[0133] Various examples have been described. These and other examples are within the scope of the following claims.

Claims (20)

1. Werkwijze waardoor wordt omvat: het detecteren door een computer inrichting van een gebruiker en tenminste gedeeltelijk gebaseerd op het bemonsteren van een eerste set van een aantal sensoren van de computer inrichting met een eerste snelheid, van een indicatie dat de gebruiker aan een fitness activiteit begint, waarbij de computer inrichting vooraf gedefinieerde indicatoren heeft opgeslagen van de niet-fitness activiteiten en van de fitness activiteiten in een set van vooraf gedefinieerde indicaties van de activiteiten; in reactie op het detecteren van de indicatie dat de gebruiker aan de fitness activiteiten is begonnen, het bemonsteren door de computer inrichting in een monsters nemende operationele toestand, met een tweede snelheid die groter is dan de eerste snelheid, van een tweede set van het aantal van sensoren om een kans te bepalen dat de gebruiker betrokken is bij de fitness activiteit, waarbij het tweede stel van het aantal van sensoren, andere sensoren omvat, dan de eerste set van het aantal van sensoren; en in reactie op het bepalen of de waarschijnlijkheid voldoet aan een drempelwaarde, het verzamelen door de computer inrichting in een actieve bedrijfstoestand die verschilt van de monsters nemende bedrijfstoestand, van sensorgegevens voor de fitness activiteit met gebruik van een bepaalde set van het aantal van sensoren die overeenkomt met een vooraf gedefinieerde indicator voor de fitness activiteit in de set van vooraf gedefinieerde indicaties van activiteiten.A method comprising: detecting by a computer device of a user and based at least in part on sampling a first set of a plurality of sensors of the computer device at a first speed, of an indication that the user is participating in a fitness activity begins, wherein the computer device has stored predefined indicators of the non-fitness activities and of the fitness activities in a set of predefined indications of the activities; in response to detecting the indication that the user has begun the fitness activities, sampling by the computer device in a sampling operational state, with a second speed greater than the first speed, of a second set of the number of sensors to determine a probability that the user is involved in the fitness activity, wherein the second set of the number of sensors comprises sensors other than the first set of the number of sensors; and in response to determining whether the probability satisfies a threshold value, the collection by the computer device in an active operating state different from the sampling operating state, of sensor data for the fitness activity using a certain set of the number of sensors that corresponds to a predefined indicator for the fitness activity in the set of predefined indications of activities. 2. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waarbij de computer inrichting de indicatie detecteert dat de gebruiker een fitness activiteit is gestart in een normale bedrijfstoestand, waarbij door de werkwijze verder wordt omvat: het bepalen, door de computer inrichting, van de vooraf gedefinieerde indicator voor de fitness activiteit; en het bepalen, door de computer inrichting van de drempel, die ten minste gedeeltelijk gebaseerd is op de vooraf gedefinieerde indicator voor de fitness activiteit.The method as set forth in claim 1, wherein the computer device detects the indication that the user has started a fitness activity in a normal operating condition, the method further comprising: determining, by the computer device, the predefined indicator for the fitness activity; and determining, by the computer device, the threshold based at least in part on the predefined fitness activity indicator. 3. De werkwijze zoals die uiteen wordt gezet in conclusie 2, waarbij de computer inrichting meer stroom verbruikt bij gebruik in de monstersnemende bedrijfstoestand dan in een van, de normale bedrijfstoestand of de actieve bedrijfstoestand.The method as set forth in claim 2, wherein the computer device consumes more power when used in the sampling mode of operation than in one of the normal mode of operation or the active mode of operation. 4. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: het bepalen, door de computer inrichting tijdens het besturen in een normale operationele toestand, van de vooraf gedefinieerde indicator voor de fitness activiteit; en het bepalen, door de computer inrichting en tenminste gedeeltelijk gebaseerd op de vooraf gedefinieerde indicator voor de fitness activiteit van tenminste één van, de tweede snelheid voor de monsters nemende bedrijfstoestand of de tweede set van het aantal van sensoren voor de monsters nemende bedrijfstoestand.The method as set forth in claim 1, further comprising: determining, by the computer device during control in a normal operational state, the predefined fitness activity indicator; and determining, by the computer device and based at least in part on the predefined fitness activity indicator, at least one of the operating state taking the second rate for the samples or the second set of the number of operating state sensors for the sampling. 5. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: het bepalen, door de computer inrichting tijdens het besturen in een normale operationele toestand, van de vooraf gedefinieerde indicator voor de fitness activiteit; en het bepalen, door de computer inrichting en ten minste gedeeltelijk gebaseerd op de vooraf gedefinieerde indicator voor de fitness activiteit van ten minste één van, een derde snelheid van bemonstering van de bepaalde set van het aantal van sensoren voor de actieve bedrijfstoestand of van de bepaalde set van het aantal van sensoren voor de actieve bedrijfstoestand.The method as set forth in claim 1, further comprising: determining, by the computer device during control in a normal operational state, the predefined fitness activity indicator; and determining, by the computer device and based at least in part on the predefined fitness activity indicator at least one of, a third rate of sampling of the determined set of the number of sensors for the active operating condition or of the determined set of the number of sensors for the active operating state. 6. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: het bepalen, door de computer inrichting terwijl die zich in de werkzame bedrijfstoestand bevindt, dat de waarden die gegenereerd worden door ten minste één sensor van de bepaalde set het aantal van sensoren die overeenkomt met de vooraf bepaalde indicator, niet veranderd gedurende een bepaalde tijdsperiode; en het verminderen door de computer inrichting en in reactie op het bepalen dat de waarden niet veranderd zijn voor de gedefinieerde tijdsperiode, van een derde snelheid van bemonstering van de ten minste één sensor.The method as set forth in claim 1, further comprising: determining, by the computer device while in the operating mode, that the values generated by at least one sensor of the particular set are number of sensors corresponding to the predetermined indicator, not changed during a certain period of time; and reducing, by the computer device and in response to determining that the values have not changed for the defined period of time, a third rate of sampling of the at least one sensor. 7. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waarbij de fitness activiteit uit een eerste fitness activiteit bestaat, waarbij de werkwijze verder omvat: het genereren, door de computer inrichting tijdens het gebruik in de monsters nemende bedrijfstoestand, van activiteit herkenning resultaten (ARRs) die ten minste gedeeltelijk gebaseerd zijn op de oorspronkelijke sensor component gegevens van de tweede set van het aantal van sensoren, waarbij ten minste een van de ARRs een indicatie geeft van de waarschijnlijkheid voor de eerste fitness activiteit; het detecteren, door de computer inrichting, van een anomalie in de oorspronkelijke sensor component gegevens voor een tweede fitness activiteit; en het selecteren door de computer inrichting, tenminste gedeeltelijk gebaseerd op tenminste één van de ARRs en de anomalie in de oorspronkelijke sensor component gegevens, van de eerste fitness activiteit, waarbij de kans van de tweede fitness activiteit groter is dan de kans op de eerste fitness activiteit.The method as set forth in claim 1, wherein the fitness activity consists of a first fitness activity, the method further comprising: generating, by the computer device during operation in the sample taking operating state, activity recognition results (ARRs) that are based at least in part on the original sensor component data of the second set of the number of sensors, wherein at least one of the ARRs gives an indication of the probability for the first fitness activity; detecting, by the computer device, an anomaly in the original sensor component data for a second fitness activity; and selecting by the computer device, at least in part based on at least one of the ARRs and the anomaly in the original sensor component data, the first fitness activity, the probability of the second fitness activity being greater than the probability of the first fitness activity. 8. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: voorafgaand aan het detecteren van de indicatie dat de gebruiker aan de fitness activiteit begint, het bepalen door de computer inrichting van een eerste vooraf bepaalde indicator van een activiteit die wordt aangegaan door de gebruiker, tijdens het gebruik van de computer inrichting in de normale bedrijfstoestand; in reactie op het detecteren van de indicatie dat de gebruiker is begonnen aan de fitness activiteit, het bepalen, door de computer inrichting tijdens het besturen in de monsters nemende operationele toestand, dat een onbekende activiteit is geassocieerd met de hoogste kans in een set van kansen in verband met de verzameling van vooraf gedefinieerde indicaties van de activiteiten; het op de zwarte lijst zetten, door de computer inrichting en voor een vooraf bepaalde tijdsduur, van de eerste vooraf gedefinieerde indicator van de activiteit; en in reactie op het detecteren van een tweede vooraf bepaalde indicator van een activiteit die aangegaan is door de gebruiker in de normale bedrijfstoestand, terwijl de vooraf bepaalde indicator van de activiteit op de zwarte lijst staat, afzien van werken in de monsters nemende bedrijfstoestand, waarbij de eerste en de tweede vooraf gedefinieerde indicaties hetzelfde zijn.The method as set forth in claim 1, further comprising: prior to detecting the indication that the user is starting the fitness activity, determining by the computer device a first predetermined indicator of an activity that is entered into by the user during the use of the computer device in the normal operating condition; in response to detecting the indication that the user has begun the fitness activity, determining, by the computer device while operating in the sampling state, that an unknown activity is associated with the highest probability in a set of probabilities in connection with the collection of predefined indications of activities; blacklisting, by the computer device and for a predetermined period of time, the first predefined activity indicator; and in response to detecting a second predetermined indicator of an activity entered into by the user in the normal operating state, while the predetermined indicator of the activity is blacklisted, refraining from operating in the sampling-taking operating state, the first and the second predefined indications are the same. 9. De werkwijze zoals die uiteen wordt gezet in conclusie 8, waardoor verder het verhogen wordt omvat van de vooraf gedefinieerde tijdsduur periode voor elke volgende bepaling van de computer inrichting, dat de onbekende activiteit geassocieerd is met de hoogste waarschijnlijkheid in de set van waarschijnlijkheden die geassocieerd is met de set van vooraf gedefinieerde indicaties van activiteiten.The method as set forth in claim 8, further comprising increasing the predefined duration period for each subsequent determination of the computing device that the unknown activity is associated with the highest probability in the set of probabilities that is associated with the set of predefined indications of activities. 10. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: het opslaan door de computer inrichting, van een statistiek van het gebruik van de batterij die een aanduiding geeft van een hoeveelheid van vermogen die wordt verbruikt tijdens de monsters nemende bedrijfstoestand, door op zijn minst één sensor van het aantal van sensoren; en in reactie, op het bepalen dat de ten minste één batterij gebruik statistiek voldoet aan een drempel, het niet uitvoeren door de computer inrichting, van het nemen van monsters van de tenminste één sensor op de tweede snelheid, in reactie op het detecteren van de indicatie dat de gebruiker is begonnen aan de fitness activiteit.The method as set forth in claim 1, further comprising: storing, by the computer device, a statistic of battery usage indicating an amount of power consumed during the sampling taking operating condition, by at least one sensor of the number of sensors; and in response, to determining that the at least one battery usage statistic meets a threshold, the non-execution by the computer device, of taking samples from the at least one sensor at the second speed, in response to detecting the indication that the user has started the fitness activity. 11. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waarbij de drempelwaarde een eerste drempelwaarde is en de kans een eerste waarschijnlijkheid is, en door de werkwijze verder wordt omvat: in reactie op het detecteren, terwijl het in de normale bedrijfstoestand is, dat een tweede kans van een fitness activiteit groter is dan een tweede drempelwaarde, het veranderen van de werking van de computer inrichting direct naar de actieve bedrijfstoestand van de normale bedrijfstoestand, zonder de overgang naar de monsters nemende operationele toestand, waarbij de tweede drempel hoger is dan de eerste drempel.The method as set forth in claim 1, wherein the threshold value is a first threshold value and the probability is a first probability, and the method further comprises: in response to detection while in the normal operating condition, that a second chance of a fitness activity is greater than a second threshold value, changing the operation of the computer device directly to the active operating state from the normal operating state, without the transition to the sampling operating state, the second threshold being higher then the first threshold. 12. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: in reactie op het detecteren, terwijl het in de actieve bedrijfstoestand is, dat de gebruiker van een fitness activiteit is veranderd naar een andere activiteit, waardoor de werking van de computer inrichting wordt veranderd van de werkzame bedrijfstoestand naar de monsters nemende bedrijfstoestand.The method as set forth in claim 1, further comprising: responsive to detecting, while in the active operating state, that the user has changed from a fitness activity to another activity, whereby the operation of the computer device is changed from the operating state to the sampling state. 13. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waardoor verder wordt omvat: in reactie op het detecteren van de indicatie dat de gebruiker de fitness activiteit is begonnen, het verzenden, door de computer inrichting naar een draagbare computer met inrichting, van een of meerdere instructies die ervoor zorgen dat de draagbare computer inrichting monsters gaat nemen met een derde set van sensoren van de draagbare computer inrichting op de tweede snelheid; en het ontvangen door de computer inrichting van de draagbare computer met inrichting, van gegevens van de draagbare computer inrichting die ten minste gedeeltelijk gebaseerd zijn op nog niet bewerkte sensor componentgegevens die gegenereerd zijn door de draagbare computer inrichting met de tweede snelheid.The method as set forth in claim 1, further comprising: responsive to detecting the indication that the user has started the fitness activity, sending, by the computer device to a portable computer with device, one or more instructions that cause the portable computer device to take samples with a third set of sensors from the portable computer device at the second speed; and receiving by the computer device from the portable computer with device, data from the portable computer device based at least in part on unprocessed sensor component data generated by the portable computer device at the second speed. 14. De werkwijze zoals die uiteen wordt gezet in conclusie 13, waardoor verder wordt omvat: in reactie op het bepalen dat de draagbare computer inrichting tenminste een sensor omvat van dezelfde soort als tenminste een sensor van de tweede set van het aantal van sensoren, het verzenden, door de computer inrichting en naar de draagbare computer inrichting, van één of meerdere instructies die ervoor zorg dragen dat de draagbare computer inrichting zich zal onthouden van bemonstering van de tenminste één sensor van de draagbare computer inrichting met de tweede snelheid.The method as set forth in claim 13, further comprising: responsive to determining that the portable computer device comprises at least one sensor of the same type as at least one sensor of the second set of the plurality of sensors, the sending, by the computer device and to the portable computer device, one or more instructions that cause the portable computer device to refrain from sampling the at least one sensor of the portable computer device at the second speed. 15. De werkwijze zoals die uiteen wordt gezet in conclusie 1, waarbij de indicatie dat de gebruiker aan de fitness activiteit is begonnen, ten minste gedeeltelijk gebaseerd is op informatie die ontvangen is van een draagbare computer inrichting, waarbij de informatie van de draagbare computer inrichting gebaseerd is op ten minste gedeeltelijk nog niet bewerkte sensor component gegevens die gegenereerd zijn door de draagbare computer inrichting.The method as set forth in claim 1, wherein the indication that the user has begun the fitness activity is based at least in part on information received from a portable computer device, the information from the portable computer device is based on at least partially unprocessed sensor component data generated by the portable computer device. 16. Een niet tijdelijke computer leesbaar opslagmedium, waarin gecodeerde instructies zijn opgenomen, die wanneer ze worden uitgevoerd, door ten minste één processor van een computer inrichting van een gebruiker zorgen voor: het detecteren, op basis van het ten minste gedeeltelijk bemonsteren van een eerste set van een aantal sensoren van de computer inrichting met een eerste snelheid, van een indicatie dat de gebruiker een fitness activiteit is gestart, waarbij in de computer inrichting vooraf gedefinieerde indicatoren zijn opgeslagen van de niet-fitness en de fitness activiteiten in een set van vooraf gedefinieerde indicaties van de activiteiten; in reactie op het detecteren van de indicatie dat de gebruiker is begonnen met de fitness activiteit, het bemonsteren, in een monsters nemende toestand, bij een tweede snelheid die groter is dan de eerste snelheid, van een tweede stel van het aantal van sensoren om een waarschijnlijkheid te bepalen dat de gebruiker betrokken is bij de fitness activiteit, waarbij het tweede stel van het aantal van sensoren, andere sensoren omvat dan de eerste set van het aantal van sensoren; en in reactie op het bepalen dat de waarschijnlijkheid voldoet aan een drempel, het verzamelen, in een actieve bedrijfstoestand die verschillend is van de monsters nemende toestand, van sensorgegevens voor de fitness activiteit met een bepaalde set van het aantal van sensoren die overeenkomt met een vooraf bepaalde indicator voor de fitness activiteiten in de set van vooraf gedefinieerde indicaties van activiteiten.A non-temporary computer readable storage medium, which includes encoded instructions, which when executed by at least one processor of a computer device of a user provide for: detecting, based on at least partial sampling of a first set of a number of sensors of the computer device with a first speed, of an indication that the user has started a fitness activity, wherein predefined indicators of the non-fitness and the fitness activities are stored in the computer device in a set of predefined defined indications of activities; in response to detecting the indication that the user has begun the fitness activity, sampling, in a sampling state, at a second speed greater than the first speed, a second set of the number of sensors to provide a determine the likelihood of the user being involved in the fitness activity, wherein the second set of the number of sensors includes sensors other than the first set of the number of sensors; and in response to determining that the probability meets a threshold, collecting, in an active operating state different from the sampling state, sensor data for the fitness activity with a certain set of the number of sensors corresponding to a predetermined certain indicator for fitness activities in the set of predefined indications of activities. 17. Een niet tijdelijke computer leesbaar opslagmedium, zoals dat uiteen wordt gezet in conclusie 16, dat computercode bevat met instructies die, wanneer ze worden uitgevoerd, zorg draagt dat ten minste een processor van de computer inrichting het volgende uitvoert: het bepalen, terwijl het in een normale operationele toestand is, van de vooraf gedefinieerde indicator voor de fitness activiteiten; en het bepalen, ten minste gedeeltelijk gebaseerd op de vooraf gedefinieerde indicator voor de fitness activiteit van ten minste een van, de tweede snelheid voor de monsters nemende bedrijfstoestand of de tweede set van het aantal van sensoren voor de monsters nemende bedrijfstoestand.A non-temporary computer readable storage medium, as set forth in claim 16, which includes computer code with instructions that, when executed, causes at least one processor of the computer device to perform: determining, while is in a normal operational condition, of the predefined indicator for the fitness activities; and determining, based at least in part on the predefined fitness activity indicator at least one of the operating state taking the second rate for the samples or the second set of the number of operating state sensors for the sampling. 18. Een niet tijdelijke computer leesbaar opslagmedium, zoals dat uiteen wordt gezet in conclusie 17, waarbij de computer inrichting meer stroom verbruikt, bij gebruik in de monsters nemende bedrijfstoestand dan in een van, de normale bedrijfstoestand of de actieve bedrijfstoestand.A non-temporary computer readable storage medium as set forth in claim 17, wherein the computer device consumes more power when used in the sampling mode of operation than in one of the normal mode of operation or the active mode of operation. 19. Computer inrichting waardoor wordt omvat: een of meer computerprocessors; een aantal van sensoren die werkzaam zijn verbonden met de één of meer computerprocessors; en een geheugen waardoor instructies worden omvat die, wanneer ze door de één of meerdere computerprocessors worden uitgevoerd ervoor zorg dragen dat de één of meerdere computerprocessors voor de uitvoer zorg dragen van: het detecteren, tenminste gedeeltelijk gebaseerd op het bemonsteren van een eerste set van het aantal van sensoren van de computer inrichting met een eerste snelheid, van een indicatie dat een gebruiker van de computer inrichting een fitness activiteit is begonnen, waarbij de computer inrichting vooraf gedefinieerde indicatoren van de niet-fitness en de fitness activiteiten heeft opgeslagen, in een set van vooraf gedefinieerde indicaties van de activiteiten; in reactie op het detecteren van de indicatie dat de gebruiker is begonnen met de fitness activiteit, het bemonsteren door de computer inrichting in een monsters nemende operationele toestand, met een tweede snelheid die groter is dan de eerste snelheid, van een tweede set van het aantal van sensoren om een kans te bepalen dat de gebruiker betrokken is bij de fitness activiteit, waarbij door de tweede set van het aantal van sensoren andere sensoren worden omvat dan de eerste set van het aantal van sensoren; en in reactie op het bepalen dat de waarschijnlijkheid voldoet aan een drempel, het verzamelen door de computer inrichting in een actieve bedrijfstoestand, die verschillend is van de monsters nemende toestand, van sensorgegevens voor de fitness activiteit met een bepaalde set van het aantal van sensoren die overeenkomt met een vooraf gedefinieerde indicator voor de fitness activiteiten in de set van vooraf gedefinieerde indicaties van activiteiten.19. A computer device comprising: one or more computer processors; a plurality of sensors operatively connected to the one or more computer processors; and a memory comprising instructions which, when executed by the one or more computer processors, cause the one or more computer processors to provide for the output of: detecting, based at least in part on sampling a first set of the number of sensors of the computer device with a first speed, of an indication that a user of the computer device has started a fitness activity, the computer device having stored predefined indicators of the non-fitness and the fitness activities, in a set of predefined indications of activities; in response to detecting the indication that the user has begun the fitness activity, sampling by the computer device in a sampling operational state, with a second rate greater than the first rate, of a second set of the number of sensors to determine a probability that the user is involved in the fitness activity, wherein the second set of the number of sensors includes sensors other than the first set of the number of sensors; and in response to determining that the probability satisfies a threshold, the collection by the computer device in an active operating state, different from the sampling state, of sensor data for the fitness activity with a certain set of the number of sensors that corresponds to a predefined indicator for the fitness activities in the set of predefined indications of activities. 20. De computer inrichting zoals die uiteen wordt gezet in conclusie 19, waarbij door het geheugen instructies worden omvat, die wanneer ze worden uitgevoerd door de een of meerdere computer-processors ervoor zorg dragen dat de een of meer computer-processors zorg dragen voor het uitvoeren van: het bepalen, terwijl het in een normale operationele toestand is, van de vooraf gedefinieerde indicator voor de fitness activiteit; en het bepalen, tenminste gedeeltelijk gebaseerd op de vooraf gedefinieerde indicator voor de fitness activiteit, van tenminste een van, de tweede snelheid voor de monsters nemende bedrijfstoestand of de tweede set van het aantal van sensoren voor de monsters nemende bedrijfstoestand.The computer device as set forth in claim 19, wherein the memory includes instructions that when executed by the one or more computer processors cause the one or more computer processors to performing: determining, while in a normal operational state, the predefined fitness activity indicator; and determining, at least in part based on the predefined fitness activity indicator, at least one of the operating state taking the second speed for the samples or the second set of the number of operating state sensors for the samples.
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