智能视频监控,用于家庭环境中老年人的跌倒监测

H. Foroughi, Baharak Shakeri Aski, H. Pourreza
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引用次数: 216

摘要

在智能家庭环境中,视频监控是一个无处不在的话题。在本文中,我们提出了一种新的方法来检测家庭监控场景中典型的老年人监控应用中的各种基于姿势的事件。这些事件包括正常的日常生活活动、异常行为和异常事件。由于老年人跌倒及其生理和心理后果是一个主要的健康危害,我们监测人类活动,对跌倒检测问题特别感兴趣。结合最佳拟合的人体周围近似椭圆、分割轮廓的投影直方图和头部位置的时间变化,可以为检测不同行为提供有用的线索。提取的特征向量被输入到MLP神经网络中,用于精确分类运动和确定跌倒事件。实验结果的可靠识别率表明系统的性能令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent video surveillance for monitoring fall detection of elderly in home environments
Video surveillance is an omnipresent topic when it comes to enhancing security and safety in the intelligent home environments. In this paper, we propose a novel method to detect various posture-based events in a typical elderly monitoring application in a home surveillance scenario. These events include normal daily life activities, abnormal behaviors and unusual events. Due to the fact that falling and its physical-psychological consequences in the elderly are a major health hazard, we monitor human activities with a particular interest to the problem of fall detection. Combination of best-fit approximated ellipse around the human body, projection histograms of the segmented silhouette and temporal changes of head position, would provide a useful cue for detection of different behaviors. Extracted feature vectors are fed to a MLP neural network for precise classification of motions and determination of fall event. Reliable recognition rate of experimental results underlines satisfactory performance of our system.
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