CN109166275A - A kind of tumble detection method for human body based on acceleration transducer - Google Patents

A kind of tumble detection method for human body based on acceleration transducer Download PDF

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CN109166275A
CN109166275A CN201811112919.4A CN201811112919A CN109166275A CN 109166275 A CN109166275 A CN 109166275A CN 201811112919 A CN201811112919 A CN 201811112919A CN 109166275 A CN109166275 A CN 109166275A
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tumble
acceleration
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human body
behavior
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CN109166275B (en
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任领美
刘政
张怡睿宸
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Shandong University of Science and Technology
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    • GPHYSICS
    • G08SIGNALLING
    • G08BSIGNALLING OR CALLING SYSTEMS; ORDER TELEGRAPHS; ALARM SYSTEMS
    • G08B21/00Alarms responsive to a single specified undesired or abnormal condition and not otherwise provided for
    • G08B21/02Alarms for ensuring the safety of persons
    • G08B21/04Alarms for ensuring the safety of persons responsive to non-activity, e.g. of elderly persons
    • G08B21/0407Alarms for ensuring the safety of persons responsive to non-activity, e.g. of elderly persons based on behaviour analysis
    • G08B21/043Alarms for ensuring the safety of persons responsive to non-activity, e.g. of elderly persons based on behaviour analysis detecting an emergency event, e.g. a fall
    • GPHYSICS
    • G08SIGNALLING
    • G08BSIGNALLING OR CALLING SYSTEMS; ORDER TELEGRAPHS; ALARM SYSTEMS
    • G08B21/00Alarms responsive to a single specified undesired or abnormal condition and not otherwise provided for
    • G08B21/02Alarms for ensuring the safety of persons
    • G08B21/04Alarms for ensuring the safety of persons responsive to non-activity, e.g. of elderly persons
    • G08B21/0438Sensor means for detecting
    • G08B21/0446Sensor means for detecting worn on the body to detect changes of posture, e.g. a fall, inclination, acceleration, gait

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  • General Health & Medical Sciences (AREA)
  • Gerontology & Geriatric Medicine (AREA)
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  • Measurement Of The Respiration, Hearing Ability, Form, And Blood Characteristics Of Living Organisms (AREA)

Abstract

The invention discloses a kind of tumble detection method for human body based on acceleration transducer, are related to processing of biomedical signals technical field.Human body fall detection algorithm of this method based on dual confirmation, level-one fall detection therein act (ADL) and tumble acceleration samples data according to daily behavior gathered in advance, extract threshold set;Then the ADL acceleration information of acquisition human body, the variance for extracting this group of data update the pre- tumble behavior asset pricing for being directed to the user as dynamic threshold part in real time;Set the level-one detection that human body tumble behavior is carried out using upper threshold value as human body tumble judgment criteria;During level-one fall detection, pre- tumble behavior occurs once detecting, sends the human body behavioral data started of ts before pre- tumble behavior to the second level fall detection judgement carried out on the server of nearly data source based on SVM;The threshold set for finally determining human body tumble event according to dual tumble judging result, and dynamically updating fall detection algorithm is used for the fall detection of the subsequent user.

Description

A kind of tumble detection method for human body based on acceleration transducer
Technical field
The present invention relates to processing of biomedical signals technical fields, and in particular to a kind of human body based on acceleration transducer Fall detection method.
Background technique
With the sustainable growth of world population, medical system is constantly improve, and pace of population aging constantly speeds, China It is equally faced with aging outstanding problem, old solitary people is more and more, and empty nest phenomenon is also more and more obvious.However, old solitary people Health and safety problem gradually become severe social concern.According to statistics, the whole world is more than every year 65 there are about one third The elderly in year once fell, and fell and be usually associated with serious body and psychological injury, and then give family and society It increases burden.If in time, the tumble event of accurate detection the elderly and issuing alarm and can reduce tumble pair to greatest extent The harm of the elderly's bring, has very important effect to living on one's own life for the elderly.
In human body fall detection research, the fall detection method based on acceleration transducer is most commonly seen detection hand One of section.During human body is fallen, significant changes can occur for athletic posture, for example, human body state of weightlessness, acutely Hit etc., acceleration transducer equipment is worn by human body, acquires body motion information in real time, is calculated in conjunction with specific fall detection Method can realize the detection to human body tumble state.For example, in Patent No. CN201710796479.8 Chinese patent, by adopting Collect physical activity acceleration information, converts thereof into angle value to calculate angle gradient data, and then extract inclination angle gradient variance As characteristic value, realization is compared based on dual threshold with the threshold value that latter two moment occurs of falling by choosing to fall The fall detection algorithm of human body.
In the Chinese patent of Patent No. CN201711268665.0, is extracted and accelerated using training sample acceleration information Spend signal vector amplitude peak, the most value difference value of acceleration signal vector magnitude, acceleration signal vector magnitude standard deviation and Relative angle changing value, in conjunction with two points of decision thresholds of K-means clustering method training characteristic value, by real-time inspection of falling Raw information when survey is compared the judgement realized and fallen to human body with characteristic threshold value after carrying out feature extraction.
In the Chinese patent of Patent No. CN201711489128.9, pass through acceleration transducer, gyroscope, magnetometer The acceleration information that human hands are swung in device and baroceptor acquisition walking, the valley value by extracting acceleration are averaged It is worth the average value of the time between the valley value a1 of average value acceleration and the crest value a2 of acceleration of the crest value of acceleration The average value of time between the crest value a2 of acceleration and the valley value a ' 1 of next acceleration is constructed as characteristic parameter SVM classifier is trained, and then realizes the fall detection of human body.
In the Chinese patent of Patent No. CN201210586385.5, entire tumble process is divided into 4 stages: perpendicular It encounter stage and lies low after falling and nearly quiescent phase during straight stance, the fall stage fallen early period, tumble, wherein It falls and encounter stage uses setting acceleration rate threshold method to realize judgement, and combine the standing of angle analysis human body and lying status Realize fall detection.
Although the above fall detection method is able to detect that the tumble behavior of most of human body, but due to the individual difference of user Different and current true tumble data deficiencies, so that the accuracy of fall detection is difficult to ensure.So although existing tumble is examined There are many survey method, but are not well positioned to meet the requirement of the pinpoint accuracy of fall detection.
Summary of the invention
The purpose of the present invention is in view of the above deficiencies, propose a kind of human body fall detection side based on acceleration transducer Method drops in detection report by mistake caused by individual difference due to ignoring, fail to report problem and really fall this method solve current human Insufficient problem reciprocal.
The present invention specifically adopts the following technical scheme that
A kind of tumble detection method for human body based on acceleration transducer, this method are based on detection system, detection system packet Include data acquisition module interconnected, threshold value extraction module, fall detection module and alarm and threshold value update module, alarm with Threshold value update module is connected with the fall detection module constitutes a circuit, specifically includes:
Step 1: threshold set is extracted;The acceleration samples data of ADL gathered in advance and tumble are pre-processed and mentioned Pre- tumble behavior asset pricing TH1, tumble collision threshold TH2 are taken, fall posture threshold value TH4 after restoring state threshold TH3 and falling;It is logical Cross calculate in acceleration samples data gathered in advance the sum of the mean value of all ADL data and standard deviation judge as pre- tumble it is quiet State threshold portion;The tumble data set in acceleration samples data gathered in advance is analyzed, is calculated separately from acceleration information paddy It is worth difference, relative acceleration value and the final angle value of peak value as feature, extracts the tumble collision threshold TH2 of human body, fall Posture threshold value TH4 after restoring state threshold TH3 and falling;
Step 2: the update of threshold value TH1 is carried out for the tumble behavior of user;By acquiring actual user in real time specified Acceleration information under ADL movement, and calculate this group of daily behavior and act the standard deviation of lower data as dynamic threshold part, knot It further extracts and updates pre- tumble behavior asset pricing TH1 in the static threshold part closed in step 1;
Step 3: the judgement of level-one lightweight fall detection is carried out;The real time acceleration data of user are acquired and calculate in real time, Gradually judge pre- tumble behavior, tumble collision behavior, tumble recovery behavior and the final carriage of human body, and then whether determines human body It falls, while detecting human body generation tumble behavior moment, starting wireless transmission;The ts moment before the moment is started directly Data are sent to the server at nearly data source in real time to be further processed in the algorithm finish time, meanwhile, level-one light weight The corresponding alarm signal of grade fall detection is sent to server end together;
Step 4: the fall detection judgement based on SVM, the acceleration using trained SVM classifier to receiving are carried out Degree is according to progress fall detection;If result is non-tumble behavior, do not alarm, if result is tumble behavior, alarms;
Step 5: carrying out dual confirmation and threshold value updates, and is judged according to the two-stage fall detection in step 3 and step 4 As a result Comprehensive affirming is carried out, hierarchical detection is alarmed, then confirms that human body is fallen, while by the number in this section of period According to calculating and updating TH2, TH3, TH4 again as tumble data, for the fall detection of the subsequent user, if human body behavior is Daily behavior movement, which is calculated again and updates TH1.
Preferably, acceleration samples data gathered in advance described in the step 1 are by acquiring not the same year in advance User under the requirements such as age, gender, height and body wear include acceleration transducer equipment according to specified ADL movement and The acceleration information or existing sample database of tumble movement.
Preferably, the pre- tumble behavior asset pricing TH1 is to calculate ADL data in acceleration samples data gathered in advance The static threshold of acquisition and the dynamic threshold that the acceleration information of acquisition actual user ADL obtains in real time, and sum of the two is taken to obtain ?.
Preferably, the level-one lightweight fall detection in the step three uses level Four state judgment mode step by step, leads to It crosses whether the acceleration samples data that judgement acquires in real time are greater than TH1, if it is not, then currently tumble behavior does not occur for judgement, lays equal stress on It is new to execute lightweight fall detection;If so, pre- tumble behavior currently has occurred in judgement, continue to judge acceleration information from valley Whether the difference to peak value is greater than TH2, if it is not, then currently tumble behavior does not occur for judgement, lightweight fall detection again;If so, Then judge that hard hit has occurred in human body, continue to judge whether relative acceleration value is less than TH3, if it is not, then judgement is not sent out currently Raw tumble behavior, re-executes lightweight fall detection;If so, judging that human body is in metastable state, continue judgement most Whether whole angle is less than TH4, if it is not, then currently tumble behavior does not occur for judgement, re-executes lightweight fall detection;If so, Then judge that tumble behavior occurs for human body.
Preferably, trained SVM classifier is to utilize above-mentioned acceleration samples number gathered in advance in the step 4 It is obtained according to training, by searching for the period of each group of training data, and calculates the mean value of each cycle data, standard deviation, acceleration Difference of the valley to peak value, acceleration trough to peak time-interval, the difference of acceleration peak value to valley, acceleration wave crest to trough Time interval, angle behind acceleration mean value and standard deviation and specified time interval in specified time interval after second trough Value is trained extracted feature as characteristic value collection construction SVM classifier.
Preferably, the threshold value update of TH2 in the step 5, TH3, TH4 are when dual confirmation result is row of falling For when, recalculate using data at this time as tumble data to update and realize, the update of the threshold value of TH1 is when dual confirmation knot When fruit is ADL movement, data at this time are recalculated into update as ADL data and are realized.
Preferably, the threshold value of the TH2, TH3, TH4 update, and are the tumble numbers before being fused to the new data of addition According to collection, TH2 is equally extracted using confidence interval Mathematical Method again, TH3, TH4 are as user's fall detection threshold value; The threshold value of TH1, which updates, to be realized, is the ADL data set before the data fusion that will be newly added arrives, is recalculated the static state of data set Threshold value and dynamic threshold method are extracted again to be obtained.
Preferably, the data acquisition module specifies the acceleration samples of ADL movement and tumble movement for acquiring user Data, and the real-time acquisition of the acceleration information of user action in actual use;
The threshold value extraction module, connect with acquisition module, for analyzing and extracting acquisition ADL acceleration information collection in advance Static threshold and the real-time ADL acceleration information of user dynamic threshold part, and then extract TH1, while analyze in advance acquisition Tumble action acceleration data set extracts TH2, TH3, TH4;
The fall detection module, connect with data acquisition module and threshold value extraction module, using based on dual confirmation Two-stage tumble judgment mode realizes the real-time detection of the final tumble behavior of user;
It is described alarm be connected with threshold value update module and fall detection module constitute a circuit, for tumble alarm and The update of TH1, TH2, TH3, TH4 threshold set.
The invention has the following beneficial effects:
Thought is updated using dynamic threshold value, is solved because individual difference causes fall detection accuracy problem;
It is the dual determination of lightweight tumble judgement and the second level fall detection judgement based on SVM using level-one fall detection Fall monitoring method, update given threshold using true tumble data, solve that current true tumble data difficulty obtains asks Topic, and the accuracy of fall detection is improved, meet the high-precision requirement of human body fall detection.
Real-time, pinpoint accuracy fall detection is carried out to user in the case where human body is fallen, it can be to user reality Timely, effective relief is applied, and then can guarantee the personal safety of user.
Detailed description of the invention
Fig. 1 is the flow chart of the tumble detection method for human body based on acceleration transducer;
Fig. 2 is the specific flow chart of step S3 in the tumble detection method for human body based on acceleration transducer;
Fig. 3 is the human body fall detection system theory structure schematic diagram based on acceleration transducer.
Specific embodiment
ADL: daily behavior movement;
SVM classifier: being the identification and classification device defined by Optimal Separating Hyperplane, i.e., the training sample of given one group of tape label, Algorithm will export an optimal hyperlane and classify to new samples (test sample).
A specific embodiment of the invention is described further in the following with reference to the drawings and specific embodiments:
As shown in Figure 1-Figure 3, a kind of tumble detection method for human body based on acceleration transducer, this method are based on detection system System, detection system include data acquisition module interconnected, threshold value extraction module, fall detection module and alarm with threshold value more New module, alarm is connected with threshold value update module with the fall detection module constitutes a circuit, specifically includes:
Step 1: threshold set is extracted;The acceleration samples data of ADL gathered in advance and tumble are pre-processed and mentioned Pre- tumble behavior asset pricing TH1, tumble collision threshold TH2 are taken, fall posture threshold value TH4 after restoring state threshold TH3 and falling;It is logical Cross calculate in acceleration samples data gathered in advance the sum of the mean value of all ADL data and standard deviation judge as pre- tumble it is quiet State threshold portion;The tumble data set in acceleration samples data gathered in advance is analyzed, is calculated separately from acceleration information paddy It is worth difference, relative acceleration value and the final angle value of peak value as feature, extracts the tumble collision threshold TH2 of human body, fall Posture threshold value TH4 after restoring state threshold TH3 and falling;
The main acquisition modes of acceleration samples data gathered in advance are as follows: enabling each user wear in waist includes to add The equipment of velocity sensor completes specified ADL and tumble movement, acquires the user's during completing required movement Acceleration information, wherein the user for participating in data acquisition mainly includes all ages and classes, gender, height, the use under the requirements such as weight Family.Specified ADL movement mainly includes standing, and walks, sits, and jump squats down, lies down, walk-sit, walks-lie, and crouching-is stood, stair climbing etc., Specified tumble movement mainly includes falling forward, falls back, falls, trip to side.
Step 2: the update of threshold value TH1 is carried out for the tumble behavior of user;By acquiring actual user in real time specified Acceleration information under ADL movement, and calculate this group of daily behavior and act the standard deviation of lower data as dynamic threshold part, knot It further extracts and updates pre- tumble behavior asset pricing TH1 in the static threshold part closed in step 1;
Step 3: the judgement of level-one lightweight fall detection is carried out;The real time acceleration data of user are acquired and calculate in real time, Gradually judge pre- tumble behavior, tumble collision behavior, tumble recovery behavior and the final carriage of human body, and then whether determines human body It falls, while detecting human body generation tumble behavior moment, starting wireless transmission;The ts moment before the moment is started directly Data are sent to the server at nearly data source in real time to be further processed in the algorithm finish time, meanwhile, level-one light weight The corresponding alarm signal of grade fall detection is sent to server end together;
Step 4: the fall detection judgement based on SVM, the acceleration using trained SVM classifier to receiving are carried out Degree is according to progress fall detection;If result is non-tumble behavior, do not alarm, if result is tumble behavior, alarms;
Step 5: carrying out dual confirmation and threshold value updates, and is judged according to the two-stage fall detection in step 3 and step 4 As a result Comprehensive affirming is carried out, hierarchical detection judges to alarm, then confirms that human body is fallen, while by the number in this section of period According to calculating and updating TH2, TH3, TH4 again as tumble data, for the fall detection of the subsequent user, if human body behavior is Daily behavior movement, which is calculated again and updates TH1.
Acceleration samples data gathered in advance described in step 1 are by acquiring all ages and classes, gender, height in advance Worn with the user under the requirements such as body include acceleration transducer equipment according to specified ADL movement and tumble movement plus Speed data or existing sample database.
Pre- tumble behavior asset pricing TH1 is to calculate the static threshold that ADL data obtain in acceleration samples data gathered in advance The dynamic threshold that the acceleration information of value and acquisition actual user ADL in real time obtain, and sum of the two is taken to obtain.
Level-one lightweight fall detection in step 3 uses level Four state judgment mode step by step, passes through and judges acquisition in real time Acceleration samples data whether be greater than TH1, if it is not, then currently tumble behavior does not occur for judgement, and re-execute lightweight and fall It detects;If so, pre- tumble behavior currently has occurred in judgement, continue whether to judge difference of the acceleration information from valley to peak value Greater than TH2, if it is not, then currently tumble behavior does not occur for judgement, lightweight fall detection again;If so, judging human body Hard hit, continues to judge whether relative acceleration value is less than TH3, if it is not, then currently tumble behavior does not occur for judgement, again Execute lightweight fall detection;If so, judging that human body is in metastable state, continue to judge whether final angle is less than TH4 re-executes lightweight fall detection if it is not, then currently tumble behavior does not occur for judgement;If so, judging human body Tumble behavior.
Trained SVM classifier is obtained using above-mentioned acceleration samples data training gathered in advance in step 4, By searching for the period of each group of training data, and calculate the mean value of each cycle data, standard deviation, acceleration valley to peak value it Difference, acceleration trough to peak time-interval, the difference of acceleration peak value to valley, acceleration wave crest to decrease amount interval, the Angle value behind acceleration mean value and standard deviation and specified time interval in specified time interval after two troughs, will be extracted 9 features are trained as characteristic value collection construction SVM classifier.
TH2 in step 5, TH3, the threshold value update of TH4 be when dual confirmation result is tumble behavior, will at this time Data recalculate to update as tumble data and realize, the update of the threshold value of TH1 is when dual confirmation result is ADL dynamic When making, data at this time are recalculated into update as ADL data and are realized.
The threshold value of TH2, TH3, TH4 update, and are the tumble data sets before being fused to the new data of addition, same to use Confidence interval Mathematical Method extracts TH2 again, and TH3, TH4 are as user's fall detection threshold value;The threshold value of TH1 updates real It is existing, it is the ADL data set before the data fusion that will be newly added arrives, recalculates static threshold and the dynamic threshold side of data set Method is extracted again and is obtained.
Data acquisition module specifies the acceleration samples data and reality of ADL movement and tumble movement for acquiring user The real-time acquisition of the acceleration information of user action in the use process of border;
Threshold value extraction module, connect with acquisition module, for analyzing and extracting acquisition daily behavior action acceleration in advance The static threshold (TH1 component part) of data set and the dynamic threshold part of the real-time ADL action acceleration data of user, Jin Erti TH1 is taken, while analyzing acquisition tumble action acceleration data set in advance, extracts TH2, TH3, TH4;
Fall detection module is connect with data acquisition module and threshold value extraction module, using the two-stage based on dual confirmation Tumble judgment mode realizes the real-time detection of the final tumble behavior of user;
Alarm is connected with threshold value update module and fall detection module constitutes a circuit, is used for fall alarm and TH1, The update of TH2, TH3, TH4 threshold set.
Certainly, the above description is not a limitation of the present invention, and the present invention is also not limited to the example above, this technology neck The variations, modifications, additions or substitutions that the technical staff in domain is made within the essential scope of the present invention also should belong to of the invention Protection scope.

Claims (8)

1. a kind of tumble detection method for human body based on acceleration transducer, this method is based on detection system, and detection system includes Data acquisition module, threshold value extraction module, fall detection module and alarm interconnected and threshold value update module, alarm and threshold Value update module is connected with the fall detection module constitutes a circuit, which is characterized in that specifically includes:
Step 1: threshold set is extracted;The acceleration samples data of ADL gathered in advance and tumble are pre-processed and extracted pre- Tumble behavior asset pricing TH1, tumble collision threshold TH2, fall posture threshold value TH4 after restoring state threshold TH3 and falling;Pass through meter Calculating the sum of the mean value of all ADL data and standard deviation in acceleration samples data gathered in advance is used as pre- fall to judge static threshold Value part;Analyze the tumble data set in acceleration samples data gathered in advance, calculate separately from acceleration information valley to Difference, relative acceleration value and the final angle value of peak value extract the tumble collision threshold TH2 of human body as feature, fall extensive Posture threshold value TH4 after answering state threshold TH3 and falling;
Step 2: the update of threshold value TH1 is carried out for the tumble behavior of user;By acquiring actual user in real time in specified ADL The lower acceleration information of movement, and calculate the standard deviations of this group of daily behavior movement time data as dynamic threshold part, in conjunction with It further extracts and updates pre- tumble behavior asset pricing TH1 in static threshold part in step 1;
Step 3: the judgement of level-one lightweight fall detection is carried out;The real time acceleration data of user are acquired and calculate in real time, gradually Judge pre- tumble behavior, tumble collision behavior, tumble recovery behavior and the final carriage of human body, and then determines whether human body occurs It falls, while detecting human body generation tumble behavior moment, starting wireless transmission;The ts moment before the moment is started until should Data are sent to the server at nearly data source in real time to be further processed in algorithm finish time, meanwhile, level-one lightweight falls It detects corresponding alarm signal and is sent to server end together;
Step 4: the fall detection judgement based on SVM is carried out, using trained SVM classifier to the acceleration degree received According to progress fall detection;If result is non-tumble behavior, do not alarm, if result is tumble behavior, alarms;
Step 5: carrying out dual confirmation and threshold value updates, according to the two-stage fall detection judging result in step 3 and step 4 Comprehensive affirming is carried out, hierarchical detection is alarmed, then confirms that human body is fallen, while the data in this section of period being made TH2, TH3, TH4 are calculated and update again for tumble data, for the fall detection of the subsequent user, if human body behavior is daily The data are calculated again and update TH1 by behavior act.
2. a kind of tumble detection method for human body based on acceleration transducer as described in claim 1, which is characterized in that described Acceleration samples data gathered in advance described in step 1 are wanted by acquiring all ages and classes, gender, height and body etc. in advance User's wearing under asking includes that the equipment of acceleration transducer is acted according to specified daily behavior movement (ADL) and tumble Acceleration information or existing sample database.
3. a kind of tumble detection method for human body based on acceleration transducer as described in claim 1, which is characterized in that described Pre- tumble behavior asset pricing TH1 be to calculate the static threshold and reality that ADL data obtain in acceleration samples data gathered in advance When acquisition actual user ADL the dynamic threshold that obtains of acceleration information, and sum of the two is taken to obtain.
4. a kind of tumble detection method for human body based on acceleration transducer as described in claim 1, which is characterized in that described The step of three in level-one lightweight fall detection using level Four state judgment mode step by step, pass through the acceleration that judgement acquires in real time Whether degree sample data is greater than TH1, if it is not, then currently tumble behavior does not occur for judgement, and re-executes lightweight fall detection; If so, pre- tumble behavior currently has occurred in judgement, continue to judge whether difference of the acceleration information from valley to peak value is greater than TH2, if it is not, then currently tumble behavior does not occur for judgement, lightweight fall detection again;If so, judging that play has occurred in human body Strong shock continues to judge whether relative acceleration value is less than TH3, if it is not, then currently tumble behavior does not occur for judgement, re-executes Lightweight fall detection;If so, judging that human body is in metastable state, continue to judge whether final angle is less than TH4, if No, then currently tumble behavior does not occur for judgement, re-executes lightweight fall detection;If so, judging that row of falling occurs for human body For.
5. a kind of tumble detection method for human body based on acceleration transducer as described in claim 1, which is characterized in that described Trained SVM classifier is obtained using above-mentioned acceleration samples data training gathered in advance in step 4, passes through search The period of each group of training data, and the mean value of each cycle data is calculated, standard deviation, the difference of acceleration valley to peak value accelerates Trough is spent to peak time-interval, the difference of acceleration peak value to valley, acceleration wave crest to decrease amount interval, second trough Angle value behind acceleration mean value and standard deviation and specified time interval in specified time interval afterwards, using extracted feature as Characteristic value collection construction SVM classifier is trained.
6. a kind of tumble detection method for human body based on acceleration transducer as described in claim 1, which is characterized in that described TH2 in step 5, TH3, the threshold value update of TH4 are to make data at this time when dual confirmation result is tumble behavior Recalculate to update for tumble data and realize, the update of the threshold value of TH1 be when dual confirmation result is ADL movement, will Data at this time recalculate update as ADL data and realize.
7. a kind of tumble detection method for human body based on acceleration transducer as claimed in claim 6, which is characterized in that described TH2, it is the tumble data set before being fused to the new data of addition that the threshold value of TH3, TH4, which updates, equally uses confidence area Between Mathematical Method extract TH2 again, TH3, TH4 are as user's fall detection threshold value;The threshold value of TH1, which updates, to be realized, is ADL data set before the data fusion being newly added is arrived recalculates the static threshold and dynamic threshold method weight of data set New extract is obtained.
8. a kind of tumble detection method for human body based on acceleration transducer as described in claim 1, which is characterized in that described Data acquisition module, for acquiring the acceleration samples data and actually used that user specifies ADL movement and tumble to act The real-time acquisition of the acceleration information of user action in journey;
The threshold value extraction module, connect with acquisition module, acquires the quiet of ADL acceleration information collection in advance for analyzing and extracting The dynamic threshold part of state threshold value and the real-time ADL acceleration information of user, and then TH1 is extracted, while analyzing acquisition in advance and falling Action acceleration data set extracts TH2, TH3, TH4;
The fall detection module, connect with data acquisition module and threshold value extraction module, using the two-stage based on dual confirmation Tumble judgment mode realizes the real-time detection of the final tumble behavior of user;
The alarm is connected with threshold value update module and fall detection module constitutes a circuit, is used for fall alarm and TH1, The update of TH2, TH3, TH4 threshold set.
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