Human Fall Detection Model with Lightweight Network and Tracking in Video

Xiaoli Ren, Yunjie Zhang, Yanrong Yang
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引用次数: 1

Abstract

In order to real time and accurately detect the action of human falling, combined with lightweight detection network, Kalman filter tracking, posture estimation network and spatiotemporal graph convolutional network, a joint algorithm for human fall detection in video is proposed. Firstly, the lightweight YOLOv3-Tiny algorithm is used to locate the frame of human in video, which can quickly detect the human-frame; among them, for the situation that the human body is likely to be missed in video, the Kalman filter tracking algorithm is integrated into the stage of target-detection and the accuracy of detecting is improved. Secondly, the human-frame detected or tracked in video is sent to the AlphaPose network to estimate the posture graph about human body. Finally, the spatiotemporal graph convolutional network is exploited to extract the spatiotemporal features of the human body, and eventually the result for classification is output. Experimental results show that the algorithm proposed in this paper, which is more appealing and successful than the other algorithm.
基于轻量级网络和视频跟踪的人体跌倒检测模型
为了实时准确地检测人体跌倒动作,结合轻量级检测网络、卡尔曼滤波跟踪、姿态估计网络和时空图卷积网络,提出了一种视频中人体跌倒检测的联合算法。首先,采用轻量级的YOLOv3-Tiny算法对视频中的人体帧进行定位,能够快速检测出人体帧;其中,针对视频中人体容易被遗漏的情况,将卡尔曼滤波跟踪算法集成到目标检测阶段,提高了检测精度。其次,将视频中检测到或跟踪到的人体帧发送到AlphaPose网络,估计人体姿态图;最后,利用时空图卷积网络提取人体的时空特征,并输出分类结果。实验结果表明,本文提出的算法比其他算法更具吸引力和有效性。
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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