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Random Forest Based Multi-View Fighting Detection with Direction Consistency Feature Extraction

机译:方向一致性特征提取随机森林的多视图战斗检测

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摘要

Nowadays, with the increasing number of surveillance cameras, the demand for intelligent video surveillance systems is continuously growing. Detection of fight behaviors is an important and challenging research field of intelligent video surveillance systems. In real life, the camera shooting views are usually different in complex scenarios, so a multi-view approach which performs well in videos with different shooting views is critical. In order to improve the performance of existing methods in videos with different shooting views and solve the misjudgment on non-fight, such as running, talking, etc., we analyze the motion characteristics of fight behaviors and propose two features named Direction Consistency feature and Weighted Direction Consistency feature to distinguish fight and non-fight behaviors. Based on the statistics of features, we define the final feature which is fed into the Random Forest classifier. Moreover, the proposed method is evaluated with the CASIA dataset, and the results indicate that the proposed approach can improve the accuracy, missing alarm and false alarm for the detection of fight behaviors, and it is very robust against videos with different shooting views.
机译:如今,随着监控摄像机数量越来越多,对智能视频监控系统的需求不断增长。战斗行为的检测是智能视频监控系统的重要又挑战性研究领域。在现实生活中,相机拍摄视图通常在复杂场景中的不同,因此在具有不同拍摄视图中的视频中表现良好的多视图方法是至关重要的。为了提高具有不同拍摄视图的视频中现有方法的性能,并解决非战的误判,例如运行,谈话等,我们分析了战斗行为的运动特征,并提出了两个命名方向一致性功能的特征加权方向一致性特征,以区分斗争和非战行为。基于功能的统计数据,我们定义了馈入随机林分类器的最终功能。此外,通过CASIA数据集评估所提出的方法,结果表明,该方法可以提高用于检测战斗行为的准确性,丢失警报和误报,并且对具有不同拍摄视图的视频非常强大。

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