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Tumble detection method based on deep learning and network compression

A technology of deep learning and detection methods, applied in the fields of health monitoring, machine vision recognition, and fall behavior detection, which can solve the problems of high cost and the need for manual setting of thresholds, so as to improve speed and accuracy, and have both flexibility and practicability. , the effect of overcoming limitations

Active Publication Date: 2020-05-19
GUANGDONG UNIV OF TECH
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  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

The main problem is that the threshold needs to be set manually, and the cost is high

Method used

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  • Tumble detection method based on deep learning and network compression
  • Tumble detection method based on deep learning and network compression
  • Tumble detection method based on deep learning and network compression

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Embodiment Construction

[0059] This application consists of two parts: a posture detection network and a fall recognition network. The former is a convolutional network and the latter is a recurrent network. Use the human body posture model to obtain the position information of the midpoint (that is, the body center) between the center of the head and the two hips of the human body from the image sequence, calculate the displacement of the body center of the two images before and after, and form a displacement sequence. Send this set of displacement sequences into the recurrent neural network for fall recognition. In order to expand to multi-angle recognition, the recognition probabilities output by cameras in multiple positions are sent to the multi-person voting system for voting discrimination. In order to improve the recognition speed, according to the redundancy of the features output by the convolution kernel, the human body pose estimation network that takes the longest time is clipped.

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Abstract

The invention provides a tumble detection method based on deep learning and network compression. A detection part of the method is composed of a posture estimation network and a circulation network, ahuman body posture model is used for obtaining position information of the head of a human body, the centers of two hips and the midpoint of the connecting line of the centers of the two hips from animage sequence, displacement of the body centers of adjacent images is calculated to form a displacement sequence. The group of displacement sequences is sent into a cyclic network to carry out fall-down identification. In order to expand to multi-angle recognition, recognition probabilities output by cameras at multiple positions are sent to an SVM classifier for voting judgment. In order to improve the recognition speed, according to the redundancy of the features output by the convolution kernel, the human body posture estimation network occupying the longest time is cut; the method is a pure visual detection method, not only overcomes the limitation of sensor detection, but also improves the speed and precision of visual detection. The tumble detection method is flexible and practical.

Description

technical field [0001] The invention relates to fall behavior detection, health monitoring and machine vision recognition technology, and provides a fall detection method based on deep learning and network compression. Background technique [0002] As one of the behaviors that can have a direct impact on the human body, falling will not only have a direct negative impact on human health, but also bring potential health risks. The most critical point is that falling itself is an important sign reflecting the deterioration of human health. For unattended old people and patients, whether their falling behavior can be found in time is directly related to their life safety. Because it needs a lot of manpower and material resources to monitor the falling behavior directly through the video. Therefore, intelligent fall detection came into being. [0003] The current intelligent fall detection mainly focuses on sensor detection and visual detection. The method based on sensor de...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06N3/04G06N3/08
CPCG06N3/08G06V40/20G06N3/044G06N3/045
Inventor 李祖祥曾碧
Owner GUANGDONG UNIV OF TECH
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