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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Group Structure Preserving Pedestrian Tracking in a Multicamera Video Network
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Group Structure Preserving Pedestrian Tracking in a Multicamera Video Network

机译:在多摄像机视频网络中保留行人跟踪的组结构

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Pedestrian tracking in video has been a popular research topic with many practical applications. In order to improve tracking performance, many ideas have been proposed, among which the use of geometric information is one of the most popular directions in recent research. In this paper, we propose a novel multicamera pedestrian tracking framework, which incorporates the structural information of pedestrian groups in the crowd. In this framework, first, a new cross-camera model is proposed, which enables the fusion of the confidence information from all camera views. Second, the group structures on the ground plane provide extra constraints between pedestrians. Third, the structured support vector machine is adopted to update the cross-camera model for each pedestrian according to the most recent tracked location. The experiments and detailed analysis are conducted on challenging data. The results demonstrate that the improvement in tracking performance is significant when a group structure is integrated.
机译:视频中的行人跟踪已成为具有许多实际应用的热门研究主题。为了提高跟踪性能,已经提出了许多想法,其中几何信息的使用是最近研究中最流行的方向之一。在本文中,我们提出了一种新颖的多摄像机行人跟踪框架,该框架融合了人群中行人群体的结构信息。在此框架中,首先,提出了一种新的跨摄像机模型,该模型能够融合来自所有摄像机视图的置信度信息。其次,地平面上的群结构在行人之间提供了额外的约束。第三,采用结构化支持向量机,根据最近跟踪的位置,为每个行人更新跨摄像机模型。对具有挑战性的数据进行了实验和详细分析。结果表明,当组结构被集成时,跟踪性能的改善是显着的。

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