基于运动历史图像和定向梯度特征直方图的跌倒检测

Qi Feng, Chenqiang Gao, Lan Wang, Minwen Zhang, Lian Du, Shiyu Qin
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引用次数: 7

摘要

近年来,人口老龄化是许多国家需要面对的问题之一。随着独居老人比例的增加,室内致命事故也越来越多。跌倒是老年人常见的危险事故之一。因此,摔倒后及时抢救就显得尤为重要,尤其是对独居的老年人而言。随着计算机视觉技术的发展和家庭监控的普及,基于视频分析的跌倒检测算法很好地解决了这一问题。本文提出了一种新的跌落事件检测算法。我们的算法通过将更快的R-CNN检测到的边界框映射到运动历史图像上得到子运动历史图像,然后提取方向梯度特征的直方图,最后使用支持向量机进行跌倒分类。实验证明,我们的方法在模拟跌倒和日常活动的真实图像序列数据集中实现了非常高的召回率和准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fall detection based on motion history image and histogram of oriented gradient feature
In recent years, the aging of population is one of the problems that many countries need to face. Along with the increasing proportion of elderly people living alone, there are more indoor but fatal accidents. Fall is one of these common and dangerous accidents for the elderly. Thus timely rescue after falls becomes particularly important, especially for elderly people who live alone. With the development of computer vision technology and the popularity of home surveillance, the fall detection algorithm based on video analysis provides a good solution to this problem. In this paper, we propose a new fall events detection algorithm. Our algorithm gets sub-motion history image by mapping faster R-CNN detected bounding boxes to motion history image, then extracts histogram of oriented gradient features, and finally uses support vector machine for fall classification. Proved by experiment, Our approach achieves very high recall rates and precision rates in a dataset of realistic image sequences of simulated falls and daily activities.
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