用于异常事件检测的光流方向直方图

Tian Wang, H. Snoussi
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引用次数: 44

摘要

本文提出了一种基于视频流的异常事件检测算法。该算法基于光流描述子的方向直方图和一类支持向量机分类器。我们引入了光流方向直方图网格作为整体视频帧运动信息的描述符。单类支持向量机在经过一段表征正常行为的学习周期后,检测出当前帧中被认为是需要识别的事件的异常。大量的数据集测试证实了所提出的检测方法的有效性。
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Histograms of optical flow orientation for abnormal events detection
In this paper, we propose an algorithm to detect abnormal events based on video streams. The algorithm is based on histograms of the orientation of optical flow descriptor and one-class SVM classifier. We introduce grids of Histograms of the Orientation of Optical Flow (HOF) as the descriptors for motion information of the monolithic video frame. The one-class SVM, after a learning period characterizing normal behaviors, detects the abnormality which is considered as the event needed to be recognized in the current frame. Extensive testing on dataset corroborates the effectiveness of the proposed detection method.
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