Video Based Fall Detection using Features of Motion, Shape and Histogram

Suad Albawendi, Ahmad Lotfi, Heather Powell, Kofi Appiah
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引用次数: 17

Abstract

Falls are one of the greatest risks for the older adults living alone at home. This paper presents a novel visual-based fall detection approach to support independent living for older adults. The proposed approach employs three unique features; motion information, human shape variation and projection histogram to detect a fall. Motion information of a segmented silhouette, which when extracted can provide a useful cue for classifying different behaviours. Also, the projection histogram and variation in human shape can be used to describe human body postures and subsequently fall events. The proposed approach presented here extracts motion information, using best-fit approximated ellipse around the human body and in addition projection histogram features to further improve the accuracy of fall detection. Experimental results are presented and show high fall detection rate of 99.81% with partially occluded video data.
基于运动、形状和直方图特征的视频跌倒检测
对于独居的老年人来说,跌倒是最大的风险之一。本文提出了一种新的基于视觉的跌倒检测方法,以支持老年人的独立生活。该方法采用了三个独特的特征;运动信息,人体形状变化和投影直方图检测跌倒。分割后的轮廓运动信息可以为不同的行为分类提供有用的线索。此外,投影直方图和人体形状的变化可以用来描述人体姿势和随后的跌倒事件。本文提出的方法提取运动信息,利用人体周围最适合的近似椭圆和投影直方图特征,进一步提高跌倒检测的准确性。实验结果表明,对于部分遮挡的视频数据,跌落检测率高达99.81%。
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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