使用深度视频的人体跌倒检测

Priyanka S. Sase, S. Bhandari
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引用次数: 26

摘要

拟议的跌倒检测方法旨在为独居老人建立一个支持系统。本文提出了一种基于深度视频的方法。从提取的帧中减去背景,并进行滤波、二值化和连通分量分析等预处理,从而检测出感兴趣区域(ROI)。阈值是通过考虑ROI点来计算的。将每一帧的ROI与计算出的阈值进行比较,检测下降。为了检验跌倒检测方法,对来自UR跌倒数据集和SDU跌倒数据集的跌倒和非跌倒活动视频进行了处理。结果表明,使用UR跌倒数据集,跌倒活动的准确率为100%,无跌倒活动的准确率为82.50%。此外,SDU摔倒数据集显示摔倒的准确率为100%,不摔倒的准确率为80%。
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Human Fall Detection using Depth Videos
The proposed fall detection approach is aimed at building a support system for old age people living alone in their homes. In this work, a method is proposed based on depth videos. A Region of interest (ROI) is detected by subtracting background from extracted frames along with preprocessing such as filtration, binarization and connected component analysis. The threshold is calculated by contemplating ROI points. Comparing ROI in each frame with calculated threshold, fall is detected. To scrutinize fall detection approach, videos of fall and no-fall activities from UR fall dataset and SDU fall dataset are processed. The results show 100% accuracy for fall activities and 82.50% for no-fall activities with UR fall dataset. Also SDU fall dataset shows 100% accuracy for fall and 80% for no-fall.
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