基于OpenPose和LSTM的实时跌倒检测方法

Po-Chih Chen, Chih-Hung Chang, Yu-Wei Chan, Yin-Te Tsai, W. Chu
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引用次数: 2

摘要

跌倒一直是老年人死亡的首要原因。在全球人口老龄化和出生率下降的时候。护理人员的短缺严重影响了老年人的保健。如果可以利用信息通信技术,自动检测和识别老年人跌倒,我们相信可以减少老年人因跌倒而造成的伤害。本文提出了一种不同于以往可穿戴传感设备的方法,该方法是基于图像中人体相对位置参数的位移来识别人体跌倒的发生。我们实现了一个基于OpenPose的系统,并结合具有时间序列的深度学习神经网络模型LSTM,对图像进行识别,捕获图像中人体姿态跌落和跌落的人体关节参数,对识别出的参数进行简单滤波,然后将滤波后的参数用于模型训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approach to Real-Time Fall Detection based on OpenPose and LSTM
Falls are consistently the top cause of death among seniors. At a time when the global population is getting older and fewer births. The shortage of nursing staff seriously affects the health care of the elderly. If information and communication technology can be used, automatic detection and identification the elderly fall, we believe it can reduce the injury of the elderly due to falls. This paper proposes a method different from the previous wearable sensing device, which is based on the displacement of human relative positional parameters in the image to identify the occurrence of human fall. We implemented a system based on OpenPose and combined with the deep learning neural network model LSTM with time series, the image recognition is carried out, the human joint parameters of human posture falling and falling in the image are captured, and the identified parameters are simply filtered, and then the filtered parameters are used for model training.
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