Active surveillance using depth sensing technology — Part I: Intrusion detection

Boon Leng Yap, Vishnu Monn Baskaran
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Abstract

In part I of a three-part series on active surveillance using depth-sensing technology, this paper proposes an algorithm to identify outdoor intrusion activities by monitoring skeletal positions from Microsoft Kinect sensor in real-time. This algorithm implements three techniques to identify a premise intrusion. The first technique observes a boundary line along the wall (or fence) of a surveilled premise for skeletal trespassing detection. The second technique observes the duration of a skeletal object within a region of a surveilled premise for loitering detection. The third technique analyzes the differences in skeletal height to identify wall climbing. Experiment results suggest that the proposed algorithm is able to detect trespassing, loitering and wall climbing at a rate of 70%, 85% and 80% respectively.
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使用深度传感技术的主动监视。第1部分:入侵检测
在利用深度传感技术进行主动监控的三部分系列文章的第一部分中,本文提出了一种算法,通过实时监控微软Kinect传感器的骨骼位置来识别室外入侵活动。该算法实现了三种识别前提入侵的技术。第一种技术是沿着被监视场所的墙壁(或围栏)观察边界线,以进行骨骼侵入检测。第二种技术是在监视的前提区域内观察骨骼物体的持续时间,以进行游荡检测。第三种技术是分析骨骼高度的差异,以识别爬墙。实验结果表明,该算法对擅闯、游荡和爬墙的检测率分别为70%、85%和80%。
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