TW201432633A - Falling down detection method - Google Patents
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Description
本發明是有關於一種人身安全的異常狀況偵測方法,特別是指一種跌倒偵測方法。 The invention relates to a method for detecting abnormal conditions of personal safety, in particular to a method for detecting a fall.
跌倒是老人意外死亡的主要原因,由於老年人因老化而身體協調度較低,加上跌倒後常無法及時獲得救助,而造成更大的傷害,縱使是一般人,嚴重的跌倒時也需要及時的協助。 Fall is the main cause of accidental death in the elderly. Because the elderly have a low degree of coordination due to aging, and often fail to get help in time after the fall, it causes more harm. Even if it is an average person, it also needs timely in case of serious falls. assist.
一種偵測跌倒的方法,是讓欲偵測的對像攜帶感測器,除了造成攜帶者行為不便,能偵測對象也十分受限,只有跌倒的高危險群才會在事先就攜帶感測器,況且在使用者忘記攜帶感測器時,更無作用。 A method for detecting a fall is to allow the object to be detected to carry a sensor. In addition to causing inconvenience to the carrier, the object to be detected is also very limited, and only the high-risk group that falls will carry the sensor in advance. And, when the user forgets to carry the sensor, it has no effect.
亦有利用影像辨識技術,在一般的監視錄影的基礎上,偵測是否有人員跌倒的異常狀況並發出警報,然而其資訊處理方式,大多是詳細區分出肢體,並事先定義各種跌倒的動作與姿勢,再以比對特徵的方式辨識動作。但現實生活中,人體高矮胖瘦、肢體動作十分多樣,並不容易作出精準又通用的定義,以致於現有技術對於異常狀況的辨識效果不佳,經常誤發警報或因無法偵測異常狀況 而未能及時發出警報。 It also uses image recognition technology to detect the abnormal situation of people falling down and issue an alarm based on the general surveillance video. However, most of the information processing methods are to distinguish the limbs in detail and define various fall movements in advance. Posture, and then identify the action in a way that compares features. However, in real life, the human body is tall and thin, and the body movements are very diverse. It is not easy to make a precise and universal definition, so that the prior art has poor recognition effect on abnormal conditions, often false alarms or unable to detect abnormal conditions. Failure to issue an alert in time.
因此,本發明之目的,即在提供一種可利用影像精確辨識人員跌倒而及時進行相關輸出的跌倒偵測方法。 Therefore, the object of the present invention is to provide a fall detection method capable of accurately recognizing a person falling down and performing related output in time using an image.
於是本發明跌倒偵測方法,由一監視系統執行,該監視系統包括一朝一目標區域取像的攝影機,及一接收來自該攝影機之影像的處理單元,該方法包含以下由該處理單元執行的步驟:(A)依據該攝影機傳送之影像辨識出有人員進入該目標區域,設定一異常次數為0;(B)針對一目前影像判定出該人員的複數邊緣,並將該等邊緣依預定的複數邊緣方向加以分類,計算出方向為垂直的邊緣數量佔所有邊緣數量總和的一垂直邊緣方向比例;(C)判斷該垂直邊緣方向比例是否小於一預設比例閾值,若是則進行步驟(D);(D)令該異常次數加1並紀錄該目前影像對應的時間;及(E)判斷目前影像對應的時間與第一次異常時間或上一次異常時間的間距是否不超過一預設時間長度,若是則進行步驟(F),若否則回到步驟(A);(F)判斷該異常次數是否大於一預設次數,若 是則進行步驟(G),若否則回到步驟(B);及(G)判斷為發生跌倒並進行相關輸出。 Thus, the fall detection method of the present invention is performed by a monitoring system including a camera that takes an image toward a target area, and a processing unit that receives images from the camera, the method comprising the following steps performed by the processing unit : (A) according to the image transmitted by the camera, it is recognized that a person enters the target area, and an abnormal number of times is set to 0; (B) the plural edge of the person is determined for a current image, and the edges are determined according to a predetermined plural The edge direction is classified, and the ratio of the number of edges whose direction is vertical to the total edge direction of the sum of all the edge numbers is calculated; (C) determining whether the vertical edge direction ratio is less than a preset ratio threshold, and if yes, performing step (D); (D) adding 1 to the abnormal number and recording the time corresponding to the current image; and (E) determining whether the time corresponding to the current image and the interval between the first abnormal time or the last abnormal time does not exceed a preset time length, If yes, proceed to step (F), if not, return to step (A); (F) determine whether the abnormal number is greater than a preset number of times, if If yes, go to step (G), if not, go back to step (B); and (G) determine that a fall has occurred and the relevant output is made.
較佳地,其中,該步驟(B)還計算代表該人員傾斜程度的一人員身體角度,該步驟(C)還判斷該人員身體角度是否大於一預設角度閾值,若該二判斷條件皆成立,才進行該步驟(D)。 Preferably, the step (B) further calculates a person's body angle representing the degree of inclination of the person, and the step (C) further determines whether the body angle of the person is greater than a predetermined angle threshold, and if the two determination conditions are met This step (D) is performed.
較佳地,其中,該步驟(B)是將該等邊緣分類為與垂直方向夾0度、45度、90度與135度的四個邊緣方向。 Preferably, in the step (B), the edges are classified into four edge directions of 0, 45, 90 and 135 degrees with respect to the vertical direction.
本發明之功效在於:利用垂直邊緣方向比例、人員身體角度與時間等參數進行綜合性邏輯判斷,可在不耗費龐大演算資源的情況下精準地發現人員跌倒的情況。 The invention has the advantages of comprehensive logic judgment using parameters such as vertical edge direction ratio, human body angle and time, and can accurately detect the fall of a person without consuming large calculation resources.
S11~S20‧‧‧步驟 S11~S20‧‧‧Steps
S141~S143‧‧‧步驟 S141~S143‧‧‧Steps
S151、S152‧‧‧步驟 S151, S152‧‧‧ steps
本發明之其他的特徵及功效,將於參照圖式的實施方式中清楚地呈現,其中:圖1是一流程圖,說明本發明跌倒偵測方法的較佳實施例。 Other features and advantages of the present invention will be apparent from the following description of the embodiments of the invention. FIG. 1 is a flow chart illustrating a preferred embodiment of the fall detection method of the present invention.
圖2是一影像圖,說明沒有跌倒發生的情況;圖3是一影像圖,說明有跌倒發生的情況;圖4是一序列影像圖,說明有跌倒發生的情況的偵測結果;及圖5是一序列影像圖,說明沒有跌倒發生的情況的偵測結果。 2 is an image diagram showing the case where no fall occurs; FIG. 3 is an image diagram showing the occurrence of a fall; FIG. 4 is a sequence image showing the detection result of a fall occurrence; and FIG. It is a sequence of image diagrams showing the results of detections without a fall.
在本發明被詳細描述之前,應當注意在以下的說明內容中,類似的元件是以相同的編號來表示。 Before the present invention is described in detail, it should be noted that in the following description, similar elements are denoted by the same reference numerals.
參閱圖1,本發明一種跌倒偵測方法,由一監視系統執行,當人員進入目標區域,可啟動偵測人員是否有跌倒之異常狀況。該監視系統包括一朝一目標區域取像的攝影機,及一接收來自該攝影機之影像的處理單元,該方法包含以下步驟:步驟S11一該攝影機持續對該目標區域取像,取得序列影像。 Referring to FIG. 1, a fall detection method of the present invention is executed by a monitoring system, and when a person enters a target area, it can start detecting whether a person has an abnormal condition of falling. The monitoring system includes a camera that images an image of a target area, and a processing unit that receives images from the camera. The method includes the following steps: Step S11: The camera continues to image the target area to obtain a sequence image.
以下步驟由該處理單元依據該攝影機傳送之影像進行處理。 The following steps are processed by the processing unit in accordance with the image transmitted by the camera.
步驟S12一偵測是否有人員進入,也就是辨識是否有單一或複數人員進入該目標區域。本步驟非本發明主要技術特徵所在,具體技術手段不以特定手段為限,可以利用例如前景追蹤或區域式追蹤(Region-Based Tracking),以目前影像與背景影像相減來偵測出變化區域再進一步設定規則做篩選;或者利用輪廓追蹤(Contour-Based Tracking),找出輪廓線並依據輪廓線的改變進行追蹤;或者利用特徵追蹤(Feature-Based Tracking),先針對要追蹤的物體擷取特徵,例如重心、面積等,在比對連續影像間的特徵來追蹤物體;又或者利用模型追蹤(Model-Based Tracking),首先建立物體模型、建立運動模型,再搜尋從 連續影像中比對而找出物體。本步驟的人員追蹤會產生一代表人員所在區域的追蹤框(如圖2方框所示)。 Step S12 detects whether a person has entered, that is, whether a single or plural person enters the target area. This step is not the main technical feature of the present invention. The specific technical means is not limited to specific means. For example, foreground tracking or region-based tracking (Region-Based Tracking) can be used to detect the changed region by subtracting the current image from the background image. Further set the rules for screening; or use Contour-Based Tracking to find the contours and track them according to the changes in the contours; or use Feature-Based Tracking to capture the objects to be tracked first. Features such as center of gravity, area, etc., to track objects in comparison to features between successive images; or Model-Based Tracking, first to create an object model, build a motion model, and then search for Find objects in the continuous image. The person tracking of this step will generate a tracking box for the area where the person is located (as shown in the box in Figure 2).
步驟S13一設定一異常次數為0、計數參數i為0。接著進行步驟S14之垂直邊緣方向比例條件判斷,以及步驟S15之人員身體角度條件判斷,並且在步驟S16針對條件判斷結果綜合判斷。其中步驟S14包括步驟S141至步驟S143,步驟S14包括步驟S151及步驟S152。 In step S13, the number of abnormal times is set to 0, and the count parameter i is 0. Next, the vertical edge direction proportional condition determination in step S14 and the human body angle condition determination in step S15 are performed, and the condition judgment result is comprehensively judged in step S16. Step S14 includes steps S141 to S143, and step S14 includes steps S151 and S152.
步驟S141一針對一目前影像判定出該人員的一由複數邊緣組成的輪廓線。具體計算方式詳述如下。以步驟S12已執行的人員追蹤產生的追蹤框來作為取樣範圍,接著將該取樣區域分割成多個小取樣區域,對各個小取樣區域做索貝爾(Sobel)梯度方向運算,即可求出各個小取樣區域的邊緣方向分佈情況,每個像素點都會被分類為有方向的0°、45°、90°、135°等四類與沒有方向的一類。 Step S141 determines a contour line composed of a plurality of edges of the person for a current image. The specific calculation method is detailed below. The tracking frame generated by the personnel tracking executed in step S12 is used as the sampling range, and then the sampling area is divided into a plurality of small sampling areas, and Sobel gradient direction calculation is performed on each small sampling area, and each can be obtained. The distribution of the edge direction of the small sampling area, each pixel point is classified into four types of directional, 0°, 45°, 90°, 135°, and the like.
接著,再計算出每個小取樣區域中四個邊緣方向各自所佔的比例,比例最高的類別,即是代表該小取樣區域的特性,若是屬於有方向的類別,該小取樣區域就是一邊緣,否則即屬於無方向的類別,非邊緣。各個邊緣的分佈集合即為該輪廓線。 Then, the proportion of each of the four edge directions in each small sampling area is calculated, and the category with the highest proportion is the characteristic representing the small sampling area. If it belongs to the directional category, the small sampling area is an edge. Otherwise, it belongs to the non-directional category, not the edge. The distribution set of each edge is the contour.
步驟S142一計算該等邊緣中,屬於0°的即垂直的邊緣數量,佔所有邊緣數量總和的一垂直邊緣方向比例。 Step S142 calculates a vertical edge number belonging to 0° among the edges, and a vertical edge direction ratio which is the sum of all the edge numbers.
步驟S143一判斷該垂直邊緣方向比例是否小於 一預設比例閾值,並記錄此步驟之判斷結果,也就是垂直邊緣方向比例條件判斷結果。預設比例閾值因應不同的場景或影像品質而可以做調整,舉例來說:某一場景的人員如果站著時其垂直邊緣方向比例若為1.0~0.5,那我們即可設預設比例閾值為0.45,只要垂直邊緣方向比例小於該預設比例閾值的話則垂直邊緣方向比例條件即算達成。 Step S143: determining whether the vertical edge direction ratio is smaller than A preset ratio threshold is recorded, and the judgment result of this step, that is, the judgment result of the vertical edge direction proportional condition is recorded. The preset ratio threshold can be adjusted according to different scenes or image quality. For example, if a person in a scene has a vertical edge direction ratio of 1.0 to 0.5 if standing, then we can set a preset ratio threshold. 0.45, as long as the vertical edge direction ratio is less than the preset ratio threshold, the vertical edge direction proportional condition is achieved.
步驟S151-算計代表該人員傾斜程度的一人員身體角度。在本實施例中,人員身體角度計算是將人員所在的前景區域以橢圓方式近似,計算橢圓的傾斜角度即可得到該人員身體角度。 Step S151 - calculating a person's body angle representing the degree of inclination of the person. In this embodiment, the human body angle calculation is to approximate the foreground area where the person is located in an elliptical manner, and the angle of the ellipse is calculated to obtain the body angle of the person.
步驟S152一判斷該人員身體角度是否大於一預設角度閾值,並記錄此步驟之判斷結果,也就是人員身體角度條件判斷結果。同樣地,預設角度閾值也因應不同的場景或影像品質而可以做調整,舉例來說:某一場景的人員身體角度在站立時如果為0~40的話,那我們即可設45為預設角度閾值,只要角度大於該預設角度閾值的話人員身體角度條件即算達成。 Step S152: determining whether the body angle of the person is greater than a predetermined angle threshold, and recording the judgment result of the step, that is, the judgment result of the human body angle condition. Similarly, the preset angle threshold can also be adjusted according to different scenes or image quality. For example, if the body angle of a scene is 0~40 when standing, then we can set 45 as the preset. The angle threshold of the person is achieved as long as the angle is greater than the preset angle threshold.
步驟S16-針對步驟S143之垂直邊緣方向比例條件判斷結果與步驟S152的人員身體角度條件判斷結果,分析是否兩條件皆成立?若是,則表示在該目前影像擷取當時人員有跌倒的情況發生,因此進行步驟S17,若否,則回到步驟S13之後,取下一張影像進行步驟S14及S15之條件判斷。 Step S16 - For the vertical edge direction proportional condition judgment result of step S143 and the human body angle condition judgment result of step S152, it is analyzed whether both conditions are satisfied. If so, it means that the current image capture time has occurred, so step S17 is performed. If not, the process returns to step S13, and the next image is taken to perform the condition determination of steps S14 and S15.
步驟S17-令該異常次數加1、令該計數參數i加1,並紀錄時間Ti為該目前影像對應的時間。 Step S17 - Adding the number of abnormalities by 1, incrementing the counting parameter i by 1, and recording the time T i as the time corresponding to the current image.
步驟S18一判斷目前影像對應的時間Ti與第一次異常時間T1或上一次異常時間Ti-1的間距是否不超過一預設時間長度,若是則代表人員跌倒的狀態可能是持續的,而非偶發暫態,因此接著進行步驟S18,若否則回到步驟S13進行歸零,重新起算異常次數。本實施例是以Ti-T1舉例說明,預設時間長度為3秒,但本發明不以此為限。 Step S18: determining whether the time T i corresponding to the current image and the interval between the first abnormal time T 1 or the last abnormal time T i-1 does not exceed a preset time length, and if so, the state in which the person falls may be continuous. Instead of the sporadic transient, the process proceeds to step S18. If not, the process returns to step S13 to return to zero, and the number of abnormalities is restarted. This embodiment is exemplified by T i -T 1 , and the preset time length is 3 seconds, but the invention is not limited thereto.
步驟S19-判斷該異常次數是否大於一預設次數,若是則表示該目前影像擷取當時人員跌倒的狀態是持續,可能是較為嚴動的跌倒狀態,因此進行步驟S20,若否則回到步驟S13之後,取下一張影像進行步驟S14及S15之條件判斷。 Step S19 - determining whether the abnormal number of times is greater than a preset number of times, if yes, indicating that the state of the current image capture is continuous, which may be a more severe fall state, so proceeding to step S20, if not, returning to step S13 Thereafter, the next image is taken and the condition determinations of steps S14 and S15 are performed.
步驟S20-判斷為發生人員跌倒的情況並進行相關輸出,例如使該目標區域的警報器發出警鳴聲,或者在配合的醫護人員監控的顯示幕提示有異常狀況。 Step S20 - determining that a person falls and performing related output, for example, causing an alarm of the target area to sound a beep, or displaying an abnormal condition on the display screen monitored by the coordinated medical staff.
利用上述演算技術,針對如圖2及圖3的影像進行跌倒偵測,圖中方形的追蹤框上方的三個數字分別代表人員身體角度的原始值、垂直邊緣方向比例及異常次數。 Using the above calculation technique, the fall detection is performed on the images as shown in FIG. 2 and FIG. 3, and the three numbers above the square tracking frame in the figure represent the original value of the human body angle, the vertical edge direction ratio, and the abnormal number.
就人員身體角度而言,在圖2中,人員身體角度的原始值為-18°,由於人員傾斜程度只需考慮人員身體與垂直方向的夾角,正負號不予考慮,在計算的意義上則是 取絕對值,因此圖2的人員身體角度為18°,而在圖3中,人員身體角度為75°,因此圖3的75°大於圖2的18°,圖3的人員較圖2的人員還趨近於跌倒的狀態。 In terms of the human body, in Figure 2, the original value of the human body angle is -18°. Since the inclination of the person only needs to consider the angle between the human body and the vertical direction, the sign is not considered, in the sense of calculation. Yes Taking the absolute value, so the body angle of the person in FIG. 2 is 18°, and in FIG. 3, the human body angle is 75°, so the 75° of FIG. 3 is larger than the 18° of FIG. 2, and the person in FIG. 3 is more than the person in FIG. 2 It also approaches the state of falling.
就垂直邊緣方向比例而言,圖3的0.37小於圖2的0.52,圖3的人員垂直邊緣方向比例較低、較圖2的人員還趨近於跌倒的狀態。 In terms of the vertical edge direction ratio, 0.37 of FIG. 3 is smaller than 0.52 of FIG. 2, and the vertical edge direction ratio of the person in FIG. 3 is lower, and the person in FIG. 2 is also closer to the falling state.
再考慮針對如圖4所示的序列影像,處理過程中每當流程進行到步驟S17,異常次數有逐漸累積,當累積到預設次數,即發出警報。針對如圖5所示的序列影像,由於人員正常行走的行為沒有跌倒的情況,每當流程進行到步驟S17,異常次數不會累積,因此不會發出警報。 Considering again for the sequence image shown in FIG. 4, each time the flow proceeds to step S17 during the process, the number of abnormalities gradually accumulates, and when the preset number of times is accumulated, an alarm is issued. For the sequence image shown in FIG. 5, since the behavior of the normal walking of the person does not fall, whenever the flow proceeds to step S17, the number of abnormalities does not accumulate, and therefore no alarm is issued.
綜上所述,本發明跌倒偵測方法的較佳實施例,利用垂直邊緣方向比例、人員身體角度與時間等參數進行綜合性邏輯判斷,可在不耗費龐大演算資源的情況下精準地發現人員跌倒的情況,故確實能達成本發明之目的。 In summary, the preferred embodiment of the fall detection method of the present invention utilizes parameters such as vertical edge direction ratio, human body angle and time to perform comprehensive logical judgment, and can accurately discover personnel without consuming large calculation resources. In the case of a fall, it is indeed possible to achieve the object of the present invention.
惟以上所述者,僅為本發明之較佳實施例而已,當不能以此限定本發明實施之範圍,即大凡依本發明申請專利範圍及專利說明書內容所作之簡單的等效變化與修飾,皆仍屬本發明專利涵蓋之範圍內。 The above is only the preferred embodiment of the present invention, and the scope of the present invention is not limited thereto, that is, the simple equivalent changes and modifications made by the patent application scope and patent specification content of the present invention, All remain within the scope of the invention patent.
S11~S20‧‧‧步驟 S11~S20‧‧‧Steps
S141~S143‧‧‧步驟 S141~S143‧‧‧Steps
S151、S152‧‧‧步驟 S151, S152‧‧‧ steps
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Cited By (5)
Publication number | Priority date | Publication date | Assignee | Title |
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CN104392201A (en) * | 2014-09-28 | 2015-03-04 | 燕山大学 | Human fall identification method based on omnidirectional visual sense |
TWI639978B (en) * | 2017-07-19 | 2018-11-01 | 和碩聯合科技股份有限公司 | Video surveillance system and video surveillance method |
TWI653610B (en) | 2017-12-01 | 2019-03-11 | 拓連科技股份有限公司 | Systems and methods for fall detection using radar, and related computer program products |
CN114091601A (en) * | 2021-11-18 | 2022-02-25 | 业成科技(成都)有限公司 | Sensor fusion method for detecting personnel condition |
TWI783374B (en) * | 2021-02-09 | 2022-11-11 | 國立清華大學 | Health caring system and heath caring method |
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TWI662514B (en) | 2018-09-13 | 2019-06-11 | 緯創資通股份有限公司 | Falling detection method and electronic system using the same |
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TWI275045B (en) * | 2005-09-29 | 2007-03-01 | Univ Nat Cheng Kung | Method for detecting event of falling |
TWI410235B (en) * | 2010-04-21 | 2013-10-01 | Univ Nat Chiao Tung | Apparatus for identifying falls and activities of daily living |
CN102376144A (en) * | 2010-08-11 | 2012-03-14 | 中国医药大学 | Falling warning system |
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CN104392201A (en) * | 2014-09-28 | 2015-03-04 | 燕山大学 | Human fall identification method based on omnidirectional visual sense |
CN104392201B (en) * | 2014-09-28 | 2017-05-31 | 燕山大学 | A kind of human body tumble recognition methods based on omnidirectional vision |
TWI639978B (en) * | 2017-07-19 | 2018-11-01 | 和碩聯合科技股份有限公司 | Video surveillance system and video surveillance method |
US10558863B2 (en) | 2017-07-19 | 2020-02-11 | Pegatron Corporation | Video surveillance system and video surveillance method |
TWI653610B (en) | 2017-12-01 | 2019-03-11 | 拓連科技股份有限公司 | Systems and methods for fall detection using radar, and related computer program products |
TWI783374B (en) * | 2021-02-09 | 2022-11-11 | 國立清華大學 | Health caring system and heath caring method |
CN114091601A (en) * | 2021-11-18 | 2022-02-25 | 业成科技(成都)有限公司 | Sensor fusion method for detecting personnel condition |
CN114091601B (en) * | 2021-11-18 | 2023-05-05 | 业成科技(成都)有限公司 | Sensor fusion method for detecting personnel condition |
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