Research on elevator passenger fall detection based on machine vision

Author:

Liu Shaofeng,An Ziliang,Wang Ning,Bai Dingsong,Yu Xintong

Abstract

Abstract Aiming at the problem that the current elevator monitoring system cannot detect the accidental fall of passengers, this paper proposes a fall detection method based on machine vision and multi-feature fusion. First, moving targets were extracted by ViBe algorithm, and then the human body was marked with an external rectangle. Three characteristic parameters, namely the aspect ratio, effective area ratio and centroid acceleration of the human body, were calculated. At last, thresholds were set and SVM classification training was conducted to judge whether there was a fall event. Experimental results show that the algorithm has high accuracy and good stability. It can effectively reduce the injury caused by the elderly falling down in the elevator.

Publisher

IOP Publishing

Subject

General Engineering

Reference7 articles.

1. Discussion on Design of Elevator Safety Supervision System Based on Internet of Things;Jing;China Equipment Engineering,2019

2. Fall Detection Based on MEMS Three-axis Acceleration Sensor;Peng;Chinese Journal of Sensors and Actuators,2014

3. Design and Implementation of Fall Detection Algorithm for the Elderly Based on Three-axis Acceleration Sensor;Yinsheng;Microcomputer Applications,2019

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