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Human Abnormal Behavior Detection Based on RGBD Video's Skeleton Information Entropy

机译:基于RGBD视频的骨架信息熵的人体异常行为检测

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Conventional human abnormal behavior detection is mostly done in videos taken by visible-light cameras, and it is usually designed for a certain task. In order to solve the human abnormal behavior detection problem in general situation, this paper proposes a detection algorithm based on skeleton information entropy, by using the information from RGBD videos. In this paper, we assume that abnormal behavior is disordered. To sample the accurate features of human, we use RGBD cameras to get the skeleton information. Then, we analyze the information entropy of the angles of the skeleton, and find that the values of the information entropy are significantly higher in abnormal videos than in normal videos. The methods are tested in our database taken by Kinect in our lab and we present superior results whose recall is 92 % and precision is 95.83 %, and accuracy is 94 %.
机译:常规人体异常行为检测主要由可见光摄像机拍摄的视频中进行,通常为某项任务设计。为了解决一般情况下的人体异常行为检测问题,本文通过使用RGBD视频的信息提出了一种基于骨架信息熵的检测算法。在本文中,我们假设异常行为是混乱的。要对人类的准确功能进行采样,我们使用RGBD相机获取骨架信息。然后,我们分析骨架角度的信息熵,并发现信息熵的值在异常的视频中比正常视频显着更高。这些方法在我们的实验室中的Kinect拍摄的数据库中进行了测试,我们提出了卓越的结果,其召回是92%,精度为95.83%,准确度为94%。

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