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An Efficient Method of Crowd Aggregation Computation in Public Areas

机译:公共区域人群聚集计算的一种有效方法

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摘要

The crowd stampede and terrorist attacks in public areas have now become more serious and dangerous threats due to the rapid increase in the population and scale of cities. Therefore, the analysis of crowd aggregation behavior has been a new research focus in the field of intelligent video surveillance. However, such public area scenes not only contain moving crowd but also contain other types of objects. The sizes of these objects are usually small, which make their appearances quite similar. Moreover, the individuals in a crowd move randomly and often occlude each other. All the above factors make the analysis of crowd aggregation very difficult. In this paper, the authors attempt to solve this problem in three aspects. First, a novel global feature is used to represent the moving crowd. This feature can well describe the spatial and the temporal motion information of points-of-interest. Second, a strategy is adopted to cluster the feature points first and then calculate the collectiveness. This makes the collectiveness computation of individual groups more consistent and effective. Finally, more comprehensive collective crowd descriptors are proposed to provide a detailed description of the crowd status. Based on the proposed descriptor, the authors realize the evolution analysis of the group movement and the crowd abnormal detection. The experiment results show that the proposed method is able to efficiently compute the crowd collectiveness in various public areas and provide a reliable reference for the public safety management.
机译:由于城市人口和规模的迅速增加,公共场所的群众踩踏和恐怖袭击现在已变得更加严重和危险。因此,人群聚集行为的分析已成为智能视频监控领域的新研究重点。但是,这些公共场所场景不仅包含移动人群,还包含其他类型的对象。这些对象的大小通常很小,这使它们的外观非常相似。此外,人群中的个体随机移动并且经常彼此遮挡。以上所有因素使得人群聚集分析非常困难。在本文中,作者试图从三个方面解决这个问题。首先,使用新颖的全局特征来表示移动人群。此功能可以很好地描述兴趣点的空间和时间运动信息。其次,采用策略先对特征点进行聚类,然后计算出集合度。这使得单个组的集体计算更加一致和有效。最后,提出了更全面的集体人群描述符,以提供人群状态的详细描述。基于提出的描述子,作者实现了群体运动和人群异常检测的进化分析。实验结果表明,该方法能够有效地计算出各个公共区域的人群群体,为公共安全管理提供了可靠的参考。

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