Design of Fall Detection System using Computer Vision Technique

T. Tsai, Ruizhi Wang, Chin-Wei Hsu
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引用次数: 2

Abstract

Fall detection becomes an important topic in the homecare system. Compared to the wearable sensor, video-based fall detection system is more convenient and relaxed. In this paper, we propose a real-time and high accuracy fall detection system based on the video sensing stream. Firstly, we propose a fast and high-performance foreground segmentation method, which only uses the hue image to get the human information, and is it performed with simple adaptive background model. We also solve the problem of light and shadow change and achieve better results on PETS2001, PETS2006, and CDW 2014 dataset, compared with other algorithms. Based on this high performance segmentation technique, we can develop a fall detection system. The decision of fall detection is mainly based on the shape of human and the center of gravity. In our self-made falling sequences, the experiment results show that the accuracy of our proposed method can achieve 96% on average. Furthermore we can achieve real-time performance on embedded system with any GPU acceleration supported.
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基于计算机视觉技术的跌倒检测系统设计
跌倒检测成为家庭护理系统中的一个重要课题。与可穿戴式传感器相比,基于视频的跌倒检测系统更加方便、轻松。本文提出了一种基于视频传感流的实时、高精度跌落检测系统。首先,提出了一种快速、高性能的前景分割方法,该方法仅使用色调图像获取人体信息,并采用简单的自适应背景模型进行分割。与其他算法相比,我们还解决了光影变化问题,在PETS2001、PETS2006和CDW 2014数据集上取得了更好的效果。基于这种高性能的分割技术,我们可以开发一个跌倒检测系统。跌倒检测的决定主要是基于人体的形状和重心。在自制的下降序列中,实验结果表明,该方法的平均准确率可达到96%。此外,我们还可以在支持任何GPU加速的嵌入式系统上实现实时性能。
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