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Deciphering the Crowd: Modeling and Identification of Pedestrian Group Motion

机译:解密人群:行人群体运动的建模和识别

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摘要

Associating attributes to pedestrians in a crowd is relevant for various areas like surveillance, customer profiling and service providing. The attributes of interest greatly depend on the application domain and might involve such social relations as friends or family as well as the hierarchy of the group including the leader or subordinates. Nevertheless, the complex social setting inherently complicates this task. We attack this problem by exploiting the small group structures in the crowd. The relations among individuals and their peers within a social group are reliable indicators of social attributes. To that end, this paper identifies social groups based on explicit motion models integrated through a hypothesis testing scheme. We develop two models relating positional and directional relations. A pair of pedestrians is identified as belonging to the same group or not by utilizing the two models in parallel, which defines a compound hypothesis testing scheme. By testing the proposed approach on three datasets with different environmental properties and group characteristics, it is demonstrated that we achieve an identification accuracy of 87% to 99%. The contribution of this study lies in its definition of positional and directional relation models, its description of compound evaluations, and the resolution of ambiguities with our proposed uncertainty measure based on the local and global indicators of group relation.
机译:将属性与人群中的行人相关联与监视,客户配置文件和服务提供等各个领域有关。感兴趣的属性在很大程度上取决于应用程序领域,并且可能涉及诸如朋友或家人的社会关系,以及包括领导者或下属在内的组的层次结构。但是,复杂的社会环境使这项任务变得复杂。我们通过利用人群中的小组结构来解决此问题。社会群体中个人及其同伴之间的关系是社会属性的可靠指标。为此,本文基于通过假设检验方案整合的显式运动模型来识别社会群体。我们开发了两个有关位置和方向关系的模型。通过并行使用两个模型来确定一对行人是否属于同一组,这两个模型定义了复合假设检验方案。通过在具有不同环境特性和组特征的三个数据集上测试所提出的方法,表明我们实现了87%至99%的识别精度。这项研究的贡献在于其对位置和方向关系模型的定义,对复合评价的描述以及我们基于局部和全局群关系指标提出的不确定性度量方法对歧义的解决。

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