基于光流上下文直方图的战斗检测

Yan Chen, Ling Zhang, Bi-xin Lin, Yong Xu, X. Ren
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引用次数: 19

摘要

本文提出了一种新的特征——光流上下文直方图(OFCH)来检测摄像机直播流中的异常事件,特别是打斗暴力事件。光流上下文直方图是将光流的方向直方图和光流的大小直方图结合在一起的对数极直方图系统。利用光流的方向和大小的直方图序列来表示人的动作。采用主成分分析法对人的动作表示进行降维。采用随机森林、支持向量机和贝叶斯网络等机器学习方法进行序列分类。实验是在从网上下载的视频片段上进行的。结果表明,该方法在固定监控摄像机下效果良好。
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Fighting Detection Based on Optical Flow Context Histogram
This paper proposes a new feature, optical flow context histogram (OFCH) for detecting abnormal events, especially the fighting violence events from a live camera stream. The optical flow context histogram is a log-polar histogram system which combines the histogram of orientation and magnitude of optical flow together. The human action is represented by using the histogram sequence of orientation and magnitude of optical flow. PCA is adopted to reduce the dimension of the human action representation. Several machine learning methods, including random forest, support vector machine and Bayesnet are employed for sequence classification. The experiments were carried out on the video clips downloaded from the Internet. The results show that the proposed methods work well when using a fixed surveillance camera.
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