Human Fall Detection Algorithm Based on YoloX-s and Lightweight OpenPose

Donghui Shi, Wenrui Zhu, Rui Cheng, Yuchen Yang
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Abstract

The existing research shows that falls account for a significant proportion of safety accidents. At the same time, as many countries enter an aging society, falls have increasingly become a non-negligible safety issue affecting the lives and health of the elderly. To address the current problems of human fall detection, we propose to extract a human skeleton model based on YoloX-s in combination with Lightweight OpenPose. This model can identify human fall by the difference values of angle change’s rate between the key points of the neck and knees. The results demonstrate that the accuracy rate for fall detection is 97.92% and that for normal behavior detection is 96.46%. The computing speed of the method satisfies the need for real-time processing with satisfactory robustness.
基于YoloX-s和轻量级OpenPose的人体跌倒检测算法
现有的研究表明,跌落事故占安全事故的很大比例。与此同时,随着许多国家进入老龄化社会,跌倒越来越成为影响老年人生命和健康的不可忽视的安全问题。针对目前人体跌倒检测存在的问题,我们提出了基于YoloX-s与轻量级OpenPose相结合的人体骨骼模型提取方法。该模型可以通过颈部和膝盖关键点角度变化率的差值来识别人体跌倒。结果表明,跌落检测准确率为97.92%,正常行为检测准确率为96.46%。该方法的计算速度满足实时处理的要求,同时具有较好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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