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Abnormal crowd behavior detection based on social attribute-aware force model

机译:基于社会属性感知力模型的人群异常行为检测

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In this paper, a novel social attribute-aware force model is presented for abnormal crowd pattern detection in video sequences. We take social characteristics of crowd behaviors into account in order to improve the effectiveness of the simulation on the interaction behaviors of the crowd. A quick unsupervised method is proposed to estimate the scene scale. Both the social disorder attribute and congestion attribute are introduced to describe the realistic social behaviors by using statistical context feature. Through the semantic attribute-aware enhancement, we obtain an improved model on the basis of social force. We validate our method in public available datasets for abnormal detection, and the experimental results show promising performance compared with other state of the art methods.
机译:本文提出了一种新颖的社交属性感知力模型,用于视频序列中异常人群模式的检测。为了提高模拟对人群互动行为的有效性,我们考虑了人群行为的社会特征。提出了一种快速的无监督方法来估计场景规模。引入社会障碍属性和拥塞属性,以利用统计上下文特征描述现实的社会行为。通过语义属性感知的增强,我们在社会力量的基础上获得了一种改进的模型。我们在公共可用数据集中验证了我们的方法以进行异常检测,并且实验结果表明,与其他现有方法相比,该方法具有令人鼓舞的性能。

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