AU2008201143B2 - Method for reducing noise using trainable models - Google Patents
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- AU2008201143B2 AU2008201143B2 AU2008201143A AU2008201143A AU2008201143B2 AU 2008201143 B2 AU2008201143 B2 AU 2008201143B2 AU 2008201143 A AU2008201143 A AU 2008201143A AU 2008201143 A AU2008201143 A AU 2008201143A AU 2008201143 B2 AU2008201143 B2 AU 2008201143B2
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- 238000000034 method Methods 0.000 title claims description 28
- 230000009467 reduction Effects 0.000 claims description 25
- 238000012549 training Methods 0.000 claims description 15
- 238000013442 quality metrics Methods 0.000 claims description 9
- 230000006870 function Effects 0.000 claims description 6
- 230000009466 transformation Effects 0.000 claims description 5
- 238000000354 decomposition reaction Methods 0.000 claims description 3
- 238000000844 transformation Methods 0.000 claims description 3
- 230000001052 transient effect Effects 0.000 claims description 3
- 238000012545 processing Methods 0.000 description 9
- 230000003595 spectral effect Effects 0.000 description 6
- 230000003068 static effect Effects 0.000 description 6
- 238000001514 detection method Methods 0.000 description 5
- 230000006978 adaptation Effects 0.000 description 4
- 230000000694 effects Effects 0.000 description 4
- 230000008859 change Effects 0.000 description 3
- 238000010586 diagram Methods 0.000 description 3
- 238000011156 evaluation Methods 0.000 description 3
- 230000001629 suppression Effects 0.000 description 3
- 210000000988 bone and bone Anatomy 0.000 description 2
- 238000013461 design Methods 0.000 description 2
- 230000008569 process Effects 0.000 description 2
- 238000001228 spectrum Methods 0.000 description 2
- 101000822695 Clostridium perfringens (strain 13 / Type A) Small, acid-soluble spore protein C1 Proteins 0.000 description 1
- 101000655262 Clostridium perfringens (strain 13 / Type A) Small, acid-soluble spore protein C2 Proteins 0.000 description 1
- 206010048865 Hypoacusis Diseases 0.000 description 1
- 101000655256 Paraclostridium bifermentans Small, acid-soluble spore protein alpha Proteins 0.000 description 1
- 101000655264 Paraclostridium bifermentans Small, acid-soluble spore protein beta Proteins 0.000 description 1
- 230000003190 augmentative effect Effects 0.000 description 1
- 238000013499 data model Methods 0.000 description 1
- 210000000883 ear external Anatomy 0.000 description 1
- 230000006872 improvement Effects 0.000 description 1
- 230000006698 induction Effects 0.000 description 1
- 230000003993 interaction Effects 0.000 description 1
- 230000002452 interceptive effect Effects 0.000 description 1
- 238000013507 mapping Methods 0.000 description 1
- 210000003454 tympanic membrane Anatomy 0.000 description 1
Classifications
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04R—LOUDSPEAKERS, MICROPHONES, GRAMOPHONE PICK-UPS OR LIKE ACOUSTIC ELECTROMECHANICAL TRANSDUCERS; DEAF-AID SETS; PUBLIC ADDRESS SYSTEMS
- H04R25/00—Deaf-aid sets, i.e. electro-acoustic or electro-mechanical hearing aids; Electric tinnitus maskers providing an auditory perception
- H04R25/50—Customised settings for obtaining desired overall acoustical characteristics
- H04R25/505—Customised settings for obtaining desired overall acoustical characteristics using digital signal processing
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- G—PHYSICS
- G10—MUSICAL INSTRUMENTS; ACOUSTICS
- G10L—SPEECH ANALYSIS TECHNIQUES OR SPEECH SYNTHESIS; SPEECH RECOGNITION; SPEECH OR VOICE PROCESSING TECHNIQUES; SPEECH OR AUDIO CODING OR DECODING
- G10L21/00—Speech or voice signal processing techniques to produce another audible or non-audible signal, e.g. visual or tactile, in order to modify its quality or its intelligibility
- G10L21/02—Speech enhancement, e.g. noise reduction or echo cancellation
- G10L21/0208—Noise filtering
- G10L21/0216—Noise filtering characterised by the method used for estimating noise
-
- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04R—LOUDSPEAKERS, MICROPHONES, GRAMOPHONE PICK-UPS OR LIKE ACOUSTIC ELECTROMECHANICAL TRANSDUCERS; DEAF-AID SETS; PUBLIC ADDRESS SYSTEMS
- H04R2225/00—Details of deaf aids covered by H04R25/00, not provided for in any of its subgroups
- H04R2225/39—Aspects relating to automatic logging of sound environment parameters and the performance of the hearing aid during use, e.g. histogram logging, or of user selected programs or settings in the hearing aid, e.g. usage logging
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04R—LOUDSPEAKERS, MICROPHONES, GRAMOPHONE PICK-UPS OR LIKE ACOUSTIC ELECTROMECHANICAL TRANSDUCERS; DEAF-AID SETS; PUBLIC ADDRESS SYSTEMS
- H04R2225/00—Details of deaf aids covered by H04R25/00, not provided for in any of its subgroups
- H04R2225/41—Detection or adaptation of hearing aid parameters or programs to listening situation, e.g. pub, forest
-
- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04R—LOUDSPEAKERS, MICROPHONES, GRAMOPHONE PICK-UPS OR LIKE ACOUSTIC ELECTROMECHANICAL TRANSDUCERS; DEAF-AID SETS; PUBLIC ADDRESS SYSTEMS
- H04R2460/00—Details of hearing devices, i.e. of ear- or headphones covered by H04R1/10 or H04R5/033 but not provided for in any of their subgroups, or of hearing aids covered by H04R25/00 but not provided for in any of its subgroups
- H04R2460/01—Hearing devices using active noise cancellation
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- Engineering & Computer Science (AREA)
- Acoustics & Sound (AREA)
- Physics & Mathematics (AREA)
- Signal Processing (AREA)
- Health & Medical Sciences (AREA)
- Multimedia (AREA)
- Human Computer Interaction (AREA)
- Quality & Reliability (AREA)
- Computational Linguistics (AREA)
- Audiology, Speech & Language Pathology (AREA)
- General Health & Medical Sciences (AREA)
- Neurosurgery (AREA)
- Otolaryngology (AREA)
- Measurement Of The Respiration, Hearing Ability, Form, And Blood Characteristics Of Living Organisms (AREA)
- Circuit For Audible Band Transducer (AREA)
- Noise Elimination (AREA)
Description
S&F Ref: 849277 AUSTRALIA PATENTS ACT 1990 COMPLETE SPECIFICATION FOR A STANDARD PATENT Name and Address Siemens Audiologische Technik GmbH, of of Applicant: Gebbertstrasse 125, 91058, Erlangen, Germany Actual Inventor(s): Oliver Drebler, Eghart Fischer, Ulrich Kornagel, Wolfgang Sorgel Address for Service: Spruson & Ferguson St Martins Tower Level 35 31 Market Street Sydney NSW 2000 (CCN 3710000177) Invention Title: Method for reducing noise using trainable models The following statement is a full description of this invention, including the best method of performing it known to me/us: 5845c(1 161346_1) 5 Method for reducing noise using trainable models Description The present invention relates to a method for reducing noise in hearing apparatuses by picking up an input signal, modeling the signal using a wanted signal model and a noise signal model, and reducing the noise component of the input signal using the unwanted sound estimated by the noise signal model. The term "hearing apparatus" is understood here as meaning in s particular any device that can be worn in or on the ear, such as a hearing aid, a headset, headphones or the like. Hearing aids are portable hearing apparatuses for use by the hard of hearing. In order to meet the numerous individual requirements, different hearing aids types are available, such as behind-the-ear (BTE) hearing aids, in-the-ear (ITE) hearing aids, and concha hearing aids. The hearing devices listed by way of example are worn in the outer ear or in the auditory canal. However, bone conduction hearing aids, implantable or 5 vibrotactile hearing aids are also commercially available. In these cases, the damaged hearing is stimulated either mechanically or electrically. The basic components of a hearing aid are essentially an input 30 transducer, an amplifier and an output transducer. The input transducer is generally a sound receiver, e.g. a microphone, and/or an electromagnetic receiver such as an induction coil. The output transducer is mainly implemented as an electroacoustic transducer, e.g. a miniature loudspeaker, or 35 as an electromechanical transducer such as a bone conduction earpiece. The amplifier is usually incorporated in a signal processing unit. This basic design is shown in FIG 1 using the riionil-urvh 2 5 example of a behind-the-ear hearing aid. Installed in a hearing aid housing 1 for wearing behind-the-ear are one or more microphones 2 for picking up sound from the environment. A signal processing unit 3 which is likewise incorporated in the hearing aid housing 1 processes the microphone signals and amplifies them. The output signal of the signal processing unit 3 is transmitted to a loudspeaker or earpiece 4 which outputs an audible signal. The sound is in some cases transmitted to the wearer's eardrum via a sound tube which is fixed in the auditory canal using an earmold. The hearing aid 5 and in particular the signal processing unit 3 are powered by a battery 5 likewise incorporated in the hearing aid housing 1. Monaural noise reduction methods are a fixed component of hearing aids. Frequency-domain methods using spectral weighting, e.g. Wiener filter or spectral subtraction, are used for this purpose. With these noise reduction methods, the noise component must 5 be estimated from the received noisy signal. For this estimation, the minimum statistics method, for example, can be used. In addition to noise estimation, estimation of the amplitude spectrum of the wanted signal is also necessary for Ephraim-Malah spectral weighting. 30 Both the wanted signal estimation algorithms and the noise signal estimation algorithms are based on particular, mainly simplifying assumptions in respect of the signal statistic. Thus, for example, for determining the Ephraim-Malah weighting 35 rules, the wanted signal amplitude spectra are assumed to be Gauss distributed (cf. EPHRAIM, Y.; MALAH, D.: Speech Enhancement Using a Minimum Mean-Square Error Short-Time ri 1590351:wxb 3 5 Spectral Amplitude Estimator. In: IEEE Transactions on Acoustics, Speech and Signal Processing, Dec. 1984, Vol. ASSP 32 No. 6, pages 1109 - 1121). However, the actual statistical characteristics of the wanted and noise signal are usually much more complex and are therefore only taken into consideration to a limited extent in the methods mentioned. In addition, the parameters for optimum noise reduction effect with minimal wanted signal distortion are normally in fixed settings during operation. s In the case of non-static noise, the effect of the noise reduction methods mentioned is severely limited. Because the signal statistic has to be acquired over a sufficiently long time, the estimation of a high time-domain dynamic range of the noise can follow only relatively slowly. This reduces the noise reduction effect in such situations. With the hitherto known methods, no a priori available information is utilized for acquiring the signal statistic. 5 Even if the signal statistic is taken into account, in all the methods only a finite number of statistically different signal models are used during operation. These signal models are all in a fixed form. In addition, the modeling, particularly for the wanted signal, is very complex and also mainly defined for 30 one type of signal such as voice. The noise modeling is also mainly limited to the spectral envelope only. This means that in the case generally arising in practice, a plurality of spatially separated noise signals can be mapped only with great difficulty. Both the spatial and the spectral 35 characteristics may also change over time. r[1150Qnir1:wyh 4 5 Publication DE 101 14 101 Al discloses a method for processing an input signal in a signal processing unit of a hearing aid. In the hearing aid, adjustment parameters of a signal processing unit which relate to noise reduction are set as a function of the result of signal analysis of the input signal. If noise signals are detected, they are assigned to different noise signal categories. Different noise reduction algorithms are activated and deactivated depending on the noise signal category determined. s A need exists to improve the effect of noise reduction methods. In accordance with an aspect of the invention a method is provided for reducing noise in hearing apparatuses by picking up an input signal, modeling the input signal with a wanted signal model and a noise signal model and reducing the noise component of the input signal using the noise signal model and/or the wanted signal model, and also acquiring a signal statistic of the input signal and changing the wanted signal s model and/or the noise signal model as a function of the signal statistic. In this context the term "changing" is to be understood not as "replacing" a model, but as modifying and adapting the content of a model. 30 The aspect of the invention is advantageously based on the recognition that a priori available information for acquiring the signal statistic can be used for obtaining the parameters of suitable models of the wanted signal and of the noise signal, the fixed model parameters having to be set using 35 statistically relevant training data in such a way that maximally comprehensive mapping of the signal statistic is achieved. The noise reduction is not therefore performed as in r( i -1urvh 5 5 known methods using fixed assumptions with regard to signal estimation or using signal model parameters that have been pre-trained in a fixed manner. On the contrary, by acquiring the individual wanted and noise signal statistic, the noise reduction can be optimally matched to the current situation of the hearing aid wearer or hearing apparatus user. According to a specific embodiment, one or both of the wanted signal model and noise signal model of the inventive noise reduction algorithm can be autoregressive models with trained s codebooks, models with overcomplete codebooks, models based on transformations or wavelet representations, models with decompositions into tonal, transient and noise-like components and signal statistical modelings. This means that the models to be trained can be initiated with "pre-knowledge". According to another embodiment it can be provided that, during operation of the hearing apparatus, data logging of the input signal and/or of its signal statistic relating to parameters of the model to be changed is carried out and the 5 model to be changed is trained using the logged data. Using the logged data, training can thus take place in real time. Preferably, data logging and training take place automatically in a continuous manner. A current newly trained signal model is therefore always available. 30 A noise reduction quality metric can be used for selecting a wanted signal model and a noise signal model. In addition to the wanted signal model and the noise signal 3j model, at least one other model selectable by the hearing apparatus user can be trained and used for noise reduction instead of the wanted signal model or noise signal model. The [1 159351-wxch 6 5 user can therefore himself be involved in the process of deciding on the model to be used and subjectively influence noise reduction. According to another embodiment of the invention, the model to > be changed can also be changed on the basis of a noise or wanted signal estimation carried out in real time, thereby also enabling model parameters to be obtained by estimations. Another preferred embodiment of the present invention consists 5 in that at least one other model is used to estimate the unwanted or wanted sound in addition to the noise signal model and the wanted signal model. Thus, for example, by using a plurality of parallel noise signal models, even complex noise originating from a plurality of different sources can be 3 effectively suppressed. The embodiments of the invention will now be explained in greater detail with reference to the accompanying drawings in which: 5 FIG 1 shows the basic design of a prior art hearing aid; FIG 2 shows a block diagram for the adaptation of the signal models by means of data logging according to 30 an embodiment of the present invention; FIG 3 shows a block diagram for the adaptation of a plurality of signal models by means of data logging, and 35 FIG 4 shows a block diagram with automatic adaptation of the signal models. ri 1(Al-urvh 7 5 The exemplary embodiments described in greater detail below represent preferred embodiments of the present invention. The noise suppression systems presented here generally relate > to systems in which at least one noisy input signal is simulated by modeling, at least one model being used for a wanted signal component and a noise signal component in each case, the parameters of which are estimated as a function of the input signal such that the model optimally describes the 5 input signal according to a particular criterion. Possible models typically include autoregressive models with trained codebooks as well as models with overcomplete codebooks, models based on transformations such as the Fourier transformation, the discrete cosine transformation or based on > wavelet representations, models with decompositions into tonal, transient and noise-like components, signal statistical modeling or other suitable models. Using the thus obtained model-like descriptions for the wanted and noise signal, noise suppression can be carried out by means of various known 5 techniques. For the noise suppression, one or more signal models are suitably adapted individually to the input signal statistic actually present. For this purpose there exist fundamentally 30 different adaptation possibilities, as described in greater detail below in connection with FIGS 2 to 4. The system as shown in FIG 2 has a model-based noise reduction algorithm 10 as a central component. An input signal E is fed 35 to it and it produces a corresponding output signal A. The noise reduction algorithm 10 is based on the one hand on a wanted signal model 11 and on the other on a noise signal f1Cri luv 8 5 model 12. It additionally supplies a data logging unit 13 in which the input signal E is also logged. Logged model parameters M, logged quality metrics Q as well as the logged input signal E can therefore be read out from data logging unit 13. During operation of the hearing apparatus or more specifically hearing aid, the input signal and/or its signal statistic which is mapped by the corresponding model parameters are recorded by means of data logging in the data logging unit 13. 5 The logging can take place continuously or else as a function of the quality of the noise reduction currently achieved. A corresponding quality metric Q is constantly available and can initiate logging e.g. if a threshold is undershot. However, logging can also, for example, be initiated manually by the user. Using the logged data, the training for improved model parameters M of the wanted signal and/or noise signal can then take place at the time of evaluation at the hearing aid s acoustician's. This subsequent training is indicated by the arrow 14 in FIG 2. Depending on the frequency of the logging periods, in the event of a simultaneously bad quality metric, the signal models already being used can be exchanged for the newly trained models. 30 A further improvement can be achieved by using not only an implementation for the wanted and/or noise signal model, but a plurality of models for different signal statistics. Such a system is shown by way of example in FIG 3. Its core element 35 is again the noise reduction algorithm 20 which is fed with an input signal E and which produces a corresponding output signal A. It is based on a plurality of wanted signal models f I If13151wxh 9 5 211, 212 and a plurality of noise signal models 221, 222 and 223. A specially provided model evaluation unit 24 selects for the noise reduction algorithm 20 a model from the wanted signal models 211, 212 and the noise signal models 221, 222 and 223. Model selection takes place on the basis of situation detection carried out by a situation detection unit 25 on the basis of the input signal E. With the aid of the situation detection algorithm, the signal model best suited to the current situation is selected. Situation detection is suitable for selecting, for example, the appropriate wanted signal 5 models for voice or music. There is again provided a data logging unit 23 which, in addition to the input signal E, also logs signals from the noise reduction unit 20. It also optionally records data > concerning the models selected, as symbolized by the dashed arrows in FIG 3. The data logging unit 23 then provides, as in the example in FIG 2, logged model parameters M, a logged quality metric Q and the logged input signal E. The model parameters M are used to modify the wanted signal models 211, s 212 and/or the noise signal models 221, 222 and 223. The data provided by the data logging unit 23 can be used e.g. by a hearing aid acoustician to change the per se static models 211, 212, 221, 222 and 223 during operation. This means 30 the hearing aid acoustician can change the models e.g. using the logged model parameters M and the logged quality metric Q, as indicated by the arrow 26 in FIG 3. During operation the models are again static. 35 The models newly trained using data logging can then, depending on the available memory, be added to the existing data models or existing models can be exchanged. Exchanging a [1 I I9O351wxh 10 5 model is indicated if the associated quality metrics Q are poor or rarely used. In the exemplary embodiments in FIG 2 and FIG 3 the wanted signal and noise signal models are static during operation. In the example in FIG 4 dynamic models are also used. The core element of this system is once again the model-based noise reduction algorithm 30 to which the input signal E is fed, and from which a corresponding output signal A with reduced interfering noise can be obtained. Here the noise algorithm 30 5 is based not only on a static wanted signal model 31 and a static noise signal model 32, but also on an updatable i.e. dynamic wanted signal model 37 and a likewise updatable, dynamic noise signal model 38. The two dynamic models are automatically trainable by a training algorithm 39. The latter derives training information from the input signal E and obtains additional situation data from the situation detector 35 which is likewise fed by the input signal E. On the basis of predefined criteria, possibly feedback from the noise reduction algorithm 30, the model evaluation unit 34 makes a s selection of the models to be used. The system shown in FIG 4 operates as follows: it is basically possible to adapt the signal models 37, 38 automatically to the signal statistic currently present. For this purpose, 30 depending on the situation detected in the situation detection unit 35, at least one new wanted or noise signal model adapted to the individual signal statistic is trained. This ongoing training generally provides continuously modified signal models. If the quality metric from model-based noise reduction 35 30 deteriorates and a sufficiently stable signal statistic is available in the new adapted signal model, the currently used [11 59035-wxb 11 5 signal models can be replaced by the newly trained signal models or supplemented by said new signal models. However, the decision to exchange a signal model for a newly trained signal model can also be left to the user. To this end, as described above, automatic pre-selection of the new models is performed by means of continuous training, and the user can then switch between two combinations of effective signal models e.g. by interaction via a remote control. The better combination for the user in the current situation is 5 then selected. The parameters of the above described signal models are obtained by means of a training algorithm. According to another exemplary embodiment, the signal models can also be augmented by appropriate model parameters from an estimation carried out in real time. This means that the model parameters can be adapted by estimation instead of or in addition to training. To estimate the noise signal, it is possible to use, for example, the minimum statistics method or the residual 5 noise at the output of a directional microphone signal processing unit. The parameters from the continuous training are provided with a hypothesis for the corresponding signal model by the estimated parameters. It is additionally possible, depending on the current situation, also to combine o a plurality of signal models for describing a complex signal statistic instead of selecting an individual signal model, thereby enabling e.g. a plurality of noise sources with different signal statistics to be described. f[ 1590351:wxb
Claims (7)
1. A method for reducing noise in a hearing apparatus, comprising: picking up an input signal; 10 modeling the input signal with a wanted signal model and a noise signal model; reducing a noise component of the input signal using the noise signal model and/or the wanted signal model; acquiring a signal statistic of the input signal; 15 changing the wanted signal model and/or the noise signal model as a function of the signal statistic; and during operation of the hearing apparatus, data logging of the input signal and/or of the signal statistic of the input signal relating to parameters of the model to be 20 changed is carried out and after operation of the hearing apparatus training the model to be changed using the logged data.
2. The method as claimed in claim 1, wherein one or 25 both of the wanted signal model and the noise signal model are autoregressive models with trained codebooks, models with overcomplete codebooks, models based on transformations or wavelet representations, models with decompositions into tonal, transient and noise-like components and signal 30 statistical modelings or any combinations thereof.
3. A method for reducing noise in a hearing apparatus, comprising: picking up an input signal; 35 modeling the input signal with a wanted signal model and a noise signal model; 849277 (2294106 _1) -13 5 reducing a noise component of the input signal using the noise signal model and/or the wanted signal model; acquiring a signal statistic of the input signal; changing the wanted signal model and/or the noise signal model as a function of the signal statistic; 1o during operation of the hearing apparatus, data logging of the input signal and/or of the signal statistic of the input signal relating to parameters of the model to be changed is carried out and the model to be changed is trained using the logged data, wherein data logging and is training are continuously carried out automatically; in addition to the wanted signal model and the noise signal model, training another model selectable by the hearing apparatus user and said other model to be used for noise reduction instead of the wanted signal model or noise 20 signal model.
4. The method as claimed in one of the preceding claims, wherein the model to be changed can also be changed on the basis of real-time estimation of a noise signal or a wanted 25 signal.
5. The method as claimed in one of the preceding claims 1 to 3, wherein to estimate the unwanted or wanted sound at least one other model is used in addition to the noise 30 signal model and the wanted signal model.
6. The method as claimed in one of the preceding claims 1 to 3, wherein a noise reduction quality metric is used to select a wanted signal model and a noise signal model. 35 849277 (2294106 _1) -14 5
7. A method for reducing noise in hearing apparatuses substantially as herein disclosed with reference to any one or more of Figs. 2 to 4 of the accompanying drawings. DATED this Thirtieth Day of October, 2009 10 Siemens Audiologische Technik GmbH Patent Attorneys for the Applicant SPRUSON & FERGUSON 849277 (2294106 _1)
Applications Claiming Priority (2)
Application Number | Priority Date | Filing Date | Title |
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DE102007011808A DE102007011808A1 (en) | 2007-03-12 | 2007-03-12 | Method for reducing noise with trainable models |
DE102007011808.4 | 2007-03-12 |
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AU2008201143A1 AU2008201143A1 (en) | 2008-10-02 |
AU2008201143B2 true AU2008201143B2 (en) | 2010-06-24 |
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AU2008201143A Ceased AU2008201143B2 (en) | 2007-03-12 | 2008-03-11 | Method for reducing noise using trainable models |
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EP (1) | EP1971186A3 (en) |
AU (1) | AU2008201143B2 (en) |
DE (1) | DE102007011808A1 (en) |
Citations (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
DE10114101A1 (en) * | 2001-03-22 | 2002-06-06 | Siemens Audiologische Technik | Processing input signal in signal processing unit for hearing aid, involves analyzing input signal and adapting signal processing unit setting parameters depending on signal analysis results |
US20070055508A1 (en) * | 2005-09-03 | 2007-03-08 | Gn Resound A/S | Method and apparatus for improved estimation of non-stationary noise for speech enhancement |
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DE60120949T2 (en) * | 2000-04-04 | 2007-07-12 | Gn Resound A/S | A HEARING PROSTHESIS WITH AUTOMATIC HEARING CLASSIFICATION |
EP2866474A3 (en) * | 2002-04-25 | 2015-05-13 | GN Resound A/S | Fitting methodology and hearing prosthesis based on signal-to-noise ratio loss data |
US7349549B2 (en) * | 2003-03-25 | 2008-03-25 | Phonak Ag | Method to log data in a hearing device as well as a hearing device |
WO2006114101A1 (en) * | 2005-04-26 | 2006-11-02 | Aalborg Universitet | Detection of speech present in a noisy signal and speech enhancement making use thereof |
-
2007
- 2007-03-12 DE DE102007011808A patent/DE102007011808A1/en not_active Withdrawn
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2008
- 2008-02-26 EP EP08102007.5A patent/EP1971186A3/en not_active Ceased
- 2008-03-11 AU AU2008201143A patent/AU2008201143B2/en not_active Ceased
Patent Citations (2)
Publication number | Priority date | Publication date | Assignee | Title |
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DE10114101A1 (en) * | 2001-03-22 | 2002-06-06 | Siemens Audiologische Technik | Processing input signal in signal processing unit for hearing aid, involves analyzing input signal and adapting signal processing unit setting parameters depending on signal analysis results |
US20070055508A1 (en) * | 2005-09-03 | 2007-03-08 | Gn Resound A/S | Method and apparatus for improved estimation of non-stationary noise for speech enhancement |
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AU2008201143A1 (en) | 2008-10-02 |
EP1971186A2 (en) | 2008-09-17 |
DE102007011808A1 (en) | 2008-09-18 |
EP1971186A3 (en) | 2016-07-20 |
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