基于重叠摄像机前景多边形单应性映射的视频人物跌落检测

Mikaël A. Mousse, C. Motamed, E. C. Ezin
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引用次数: 3

摘要

在本文中,我们研究了一种基于视频的方法来检测重叠摄像机的跌倒事件。我们的目标是提出一种新的方法,在没有任何可穿戴设备的情况下,通过在地平面(或参考摄像机视图平面)上使用同形投影,使用多摄像机系统检测地板上的跌倒。利用两个相对正交的视图,依次简化了根据每个相机的前景信息对接触地面的人的表面的估计。计算这些信息是为了区分躺在地板上的姿势,这种姿势可以被认为是跌倒到其他位置。我们的方法在一个公共的多视图数据集上进行了性能测试。实验结果表明了算法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video-Based People Fall Detection via Homography Mapping of Foreground Polygons from Overlapping Cameras
In this paper, we investigate a video-based method of detecting fall incidents from overlapping cameras. Our aim here is to propose a novel method, without any wearable device, to detect falls on the floor with a multiple cameras system by using homographic projection on aground plane (or on reference camera view plane). Two relatively orthogonal views are utilized, in turn, simplifying the estimation of the surface of the person which is in contact with the ground according of the foreground information of each camera. This information is computed in order to differentiate lying on floor posture which can be considered as fall to other position. The performance of our method is tested on a public multi-view fall dataset. The results show the accuracy of our proposed algorithm.
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