A method and system for detecting human falls based on big data

A detection method and big data technology, applied in instruments, alarms, etc., can solve the problems of waste of data resources, the continuity and lack of fall detection, and the inability to improve the accuracy of fall detection algorithms, etc.

Inactive Publication Date: 2018-04-03
JIANGSU UNIV
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  • Abstract
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  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0004] 1. It is difficult to obtain the real fall data of the elderly as the basic training data of the fall detection method. In the test, the fall data of students is generally used, which leads to the inability to improve the accuracy of the fall detection algorithm
[0005] 2. The classification models of the existing fall detection algorithms are fixed and oriented to the general public, and cannot be adjusted according to the characteristics of the human body
[0006] 3. In the traditional research on fall detection, the fall data is often only used as the basis for judging the state of the fall, and the data is released after the judgment
This results in a waste of data resources and loss of continuity in fall detection

Method used

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  • A method and system for detecting human falls based on big data
  • A method and system for detecting human falls based on big data
  • A method and system for detecting human falls based on big data

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Embodiment Construction

[0066] The technical solution of the present invention will be described in further detail below in conjunction with the accompanying drawings. Such as figure 1 As shown, the human body fall detection method and system based on big data among the present invention, its specific steps are as follows:

[0067] Step 1. Build a big data platform, including the storage layer and data processing layer. Here, we can use the mature Hadoop storage platform and Spark computing platform under the Apache project.

[0068] Step 2, using mobile Internet technology to synchronize the mobile phone data with the data of the big data platform.

[0069] Step 3, collecting sensor information, including triaxial acceleration sensor information and gyroscope sensor information.

[0070] Step 4, constructing a feature vector according to the sensor information data. When constructing the eigenvector, the combined acceleration of the three-axis acceleration sensor and the three-axis attitude angl...

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Abstract

The invention discloses a human body tumble detection method and a human body tumble detection system based on big data. The human body tumble detection method is characterized in that characteristic vectors can be established according to information acquired by cell phone built-in sensors; a machine learning model can be used to identify whether the tumble occurs; when the user is in the tumbling state, the acquired information data can be transmitted to a big data platform in a real-time manner, and can be stored according to individual similarities; the platform is used to analyze the uploaded data by adopting the similarity metric algorithm, and is used to determine whether the updated data exists; when the updated data exists, the new data sample can be generated by the platform, and at the same time, a new machine learning classification model can be generated according to the data sample. When the tumbling state of the human body is determined by the system, the cell phone is used to trigger an alarming system automatically, and therefore the tumbling user can be rescued timely, and at the same time, the accuracy of the system can be increased continuously with the increasing sample number. The human body tumble detection method and the human body tumble detection system can be used for monitoring the activity safety of the children, the elderly, and the patients.

Description

technical field [0001] The invention relates to the fields of big data, machine learning, medical health and mobile Internet, and in particular to a method and system for detecting human falls based on big data. Background technique [0002] With the passage of time, the problem of "Baby Boomers" caused by the rapid population growth after World War II has become more and more serious. At the same time, with the change of lifestyle and the change of young people's life concept, the problem of "empty nest families" has become more and more serious. . According to statistics from relevant departments, the number of empty-nest families in my country has been on the rise, and it is expected that by 2030, the proportion of empty-nest elderly families will reach 90%. Falls are a common injury event in the elderly population, which will cause the elderly to suffer physical injuries such as fractures, bleeding, and central nervous system damage. If not treated in time, it may lead...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G08B21/04
CPCG08B21/043G08B21/0446
Inventor 施化吉张帆周从华刘志锋徐宗保朱小龙陈伟鹤
Owner JIANGSU UNIV
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