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Crowd Behavior Recognition for Video Surveillance

机译:视频监控的人群行为识别

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Crowd behavior recognition is becoming an important research topic in video surveillance for public places. In this paper, we first discuss the crowd feature selection and extraction and propose a multiple-frame feature point detection and tracking based on the KLT tracker. We state that behavior modelling of crowd is usually coarse compared to that for individuals. Instead of developing general crowd behavior models, we propose to model crowd events for specific end-user scenarios. As a result, a same type of event may be modelled slightly differently from one scenario to another and several models are to be defined. Consequently, fast modelling is required and this is enabled by the use of an extended Scenario Recognition Engine (SRE) in our approach. Crowd event models are defined; particularly, composite events accommodating evidence accumulation allow to increase detection reliability. Tests have been conducted on real surveillance video sequences containing crowd scenes. The crowd tracking algorithm proves to be robust and gives reliable crowd motion vectors. The crowd event detection on real sequences gives reliable results of a few common crowd behaviors by simple dedicated models.
机译:人群行为识别正在成为公共场所视频监控中的重要研究课题。在本文中,我们首先讨论了人群特征的选择和提取,并提出了一种基于KLT跟踪器的多帧特征点检测和跟踪。我们指出,与个人相比,人群的行为建模通常较粗糙。我们建议不开发一般的人群行为模型,而是为特定的最终用户方案建模人群事件。结果,同一事件的建模可能与一个场景之间略有不同,并且要定义几个模型。因此,需要快速建模,并通过在我们的方法中使用扩展的场景识别引擎(SRE)来实现。定义了人群事件模型;特别是,伴随证据积累的复合事件可以提高检测的可靠性。已经对包含人群场景的真实监控视频序列进行了测试。人群跟踪算法被证明是鲁棒的,并给出了可靠的人群运动矢量。通过简单的专用模型,对真实序列的人群事件检测可提供一些常见人群行为的可靠结果。

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