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An approach to detect crowd panic behavior using flow-based feature

机译:使用基于流动的特征来检测人群恐慌行为的方法

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With the purpose of achieving automated detection of crowd abnormal behavior in public, this paper discusses the category of typical crowd and individual behaviors and their patterns. Popular image features for abnormal behavior detection are also introduced, including global flow based features such as optical flow, and local spatio-temporal based features such as Spatio-temporal Volume (STV). After reviewing some relative abnormal behavior detection algorithms, a brand-new approach to detect crowd panic behavior has been proposed based on optical flow features in this paper. During the experiments, all panic behaviors are successfully detected. In the end, the future work to improve current approach has been discussed.
机译:本文讨论了典型人群和个人行为及其模式的自动检测人群异常行为的自动检测。还引入了异常行为检测的流行图像特征,包括基于流动的基于流动的功能,例如光学流量,以及诸如时空音量(STV)的局部时空基于特征。在审查一些相对异常行为检测算法之后,已经提出了一种基于本文的光流特征来检测人群恐慌行为的全新方法。在实验期间,成功地检测到所有恐慌行为。最后,已经讨论了改善目前方法的未来工作。

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