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Correlated Motion Based Crowd Analysis in Queueing Situations

机译:基于动作的基于运动的人群分析在排队情况下

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Crowd analysis by automated visual surveillance represents a challenging task in many practically relevant scenarios. In this paper we address the problem of capturing relevant correlated movement within a line formed by waiting pedestrians to estimate the time needed for the last person to reach the queue front. To obtain a waiting time estimate we propose to solve two interlinked problems: queue shape delineation and motion characterization estimating the propagation velocity along the segmented queue. Accordingly, we present a scheme to reliably segment the queue shape by finding and refining an optimum path over time. The optimality condition refers to minimizing its length while maximizing its overlap with observed correlated motion patterns. To capture the collective motion of the crowd within the queue we employ a deformable chain structure to temporally aggregate the relevant short-term forward movement by tracking. The resulting tracked chain structure is used to generate a mean forward propagation velocity estimate. The presented approach represents a general analysis scheme, requiring only a set of tracked pedestrians on a calibrated ground plane at every frame. We validate our proposed scheme on two real datasets with time-varying queue structures. Based on a comparison to manually-set ground truth, obtained results show that queue delineation and waiting time estimates are reliable, can cope with motion clutter and well characterize the waiting behavior and its temporal evolution.
机译:自动化视觉监控的人群分析代表了许多实际相关方案中的具有挑战性的任务。在本文中,我们解决了在等待行人形成的线内捕获相关相关运动的问题,以估计最后一个人到达队列前方所需的时间。为了获得等待时间估计,我们建议解决两个互通问题:队列形状描绘和运动表征沿分段队列估计传播速度。因此,我们提出了一种方案来可靠地通过找到和改进随时间的最佳路径来可靠地段形状。最佳状态是指最小化其长度,同时以观察到的相关运动模式最大化其重叠。为了捕获队列内人群的集体运动,我们采用可变形的链结构来通过跟踪来暂时聚集相关的短期前向运动。得到的跟踪链结构用于产生平均前向传播速度估计。所提出的方法代表了一般分析方案,只需要一组校准的地面平面上的追踪行人在每个框架上。我们在两个实时数据集中验证了我们的建议方案,其中包含了时变的队列结构。基于与手动设定的地面真理的比较,获得的结果表明,队列描绘和等待时间估计是可靠的,可以应对运动杂乱,并良好地表征等待行为及其时间进化。

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