Deep learning for vision‐based fall detection system: Enhanced optical dynamic flow

Accurate fall detection for the assistance of older people is crucial to reduce incidents of deaths or injuries due to falls. Meanwhile, vision‐based fall detection system has shown some significant results to detect falls. Still, numerous challenges need to be resolved. The impact of deep learning...

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Veröffentlicht in:Computational intelligence 2021-02, Vol.37 (1), p.578-595
Hauptverfasser: Chhetri, Sagar, Alsadoon, Abeer, Al‐Dala'in, Thair, Prasad, P. W. C., Rashid, Tarik A., Maag, Angelika
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container_end_page 595
container_issue 1
container_start_page 578
container_title Computational intelligence
container_volume 37
creator Chhetri, Sagar
Alsadoon, Abeer
Al‐Dala'in, Thair
Prasad, P. W. C.
Rashid, Tarik A.
Maag, Angelika
description Accurate fall detection for the assistance of older people is crucial to reduce incidents of deaths or injuries due to falls. Meanwhile, vision‐based fall detection system has shown some significant results to detect falls. Still, numerous challenges need to be resolved. The impact of deep learning has changed the landscape of the vision‐based system, such as action recognition. The deep learning technique has not been successfully implemented in vision‐based fall detection system due to the requirement of a large amount of computation power and requirement of a large amount of sample training data. This research aims to propose a vision‐based fall detection system that improves the accuracy of fall detection in some complex environments such as the change of light condition in the room. Also, this research aims to increase the performance of the pre‐processing of video images. The proposed system consists of Enhanced Dynamic Optical Flow technique that encodes the temporal data of optical flow videos by the method of rank pooling, which thereby improves the processing time of fall detection and improves the classification accuracy in dynamic lighting condition. The experimental results showed that the classification accuracy of the fall detection improved by around 3% and the processing time by 40–50 ms. The proposed system concentrates on decreasing the processing time of fall detection and improving the classification accuracy. Meanwhile, it provides a mechanism for summarizing a video into a single image by using dynamic optical flow technique, which helps to increase the performance of image preprocessing steps.
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source Wiley Online Library Journals Frontfile Complete; EBSCOhost Business Source Complete
subjects Accuracy
Classification
convolution neural network
Deep learning
Fall detection
Image enhancement
Injury prevention
Machine learning
optical dynamic flow images
optical flow
Optical flow (image analysis)
Video data
Vision
title Deep learning for vision‐based fall detection system: Enhanced optical dynamic flow
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