Fall Detection Based on an Inertial Sensor and a Customized Artificial Neural Network Algorithm

Wei Ma, Zhiming Xiao, Xiaosai Liu, Dongyang Tang, Weibo Hu
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Abstract

With an aging population, falls have become a significant safety hazard, especially for the elderly. This paper proposes a fall detection system based on a 6-axis inertial sensor to collect body movement information and a customized artificial neural network to process the signals. Both the acceleration and the angular velocity are utilized for accuracy measurement. Instead of the typical threshold-based algorithm, a MIMO neural network is customized for fall detection. Rather than simply distinguish between falls and other activities, the system is able to recognize the non-fall behaviors, including running, sitting and walking. The whole device is implemented on a pegboard. Experiment results show that the detection specificities of these behaviors are all above 96% and the whole system accuracy reaches 96.8%. Keywords-fall detection, inertial sensor, neural network, behavior recognition
基于惯性传感器和自定义人工神经网络算法的跌倒检测
随着人口的老龄化,跌倒已经成为一个重大的安全隐患,尤其是对老年人来说。本文提出了一种基于六轴惯性传感器的跌倒检测系统,用于采集人体运动信息,并使用定制的人工神经网络对信号进行处理。同时利用加速度和角速度进行精度测量。代替典型的基于阈值的算法,MIMO神经网络被定制用于跌倒检测。该系统不是简单地区分跌倒和其他活动,而是能够识别非跌倒行为,包括跑步、坐着和走路。整个装置是在钉板上实现的。实验结果表明,这些行为的检测特异性均在96%以上,整个系统的准确率达到96.8%。关键词:跌倒检测,惯性传感器,神经网络,行为识别
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