集体运动中基于社会力量模型的有序度度量

Yu Bai, Yi Xu, Xiaokang Yang, Qing Yan
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引用次数: 3

摘要

群体运动是群体系统中的一种协调行为,在自然界中广泛存在。井然有序的特点是一个人在集体运动中与他的邻居平稳一致地移动的程度。这在计算机视觉中仍然是一个开放的问题。本文提出了一种基于个体间互动社会力相关性的有序描述符。为了包含距离上两个个体之间的力相关性,我们提出了一种社会力相关性传播算法来有效地计算每个个体的有序度。在综合仿真中验证了所提出的有序描述符的有效性。在真实场景人群挑战性视频上的实验结果表明,有序描述符可以感知低平滑度的运动并定位无序。
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Measuring orderliness based on social force model in collective motions
Collective motions, one of the coordinated behaviors in crowd system, widely exist in nature. Orderliness characterizes how well an individual will move smoothly and consistently with his neighbors in collective motions. It is still an open problem in computer vision. In this paper, we propose an orderliness descriptor based on correlation of interactive social force between individuals. In order to include the force correlation between two individuals in a distance, we propose a Social Force Correlation Propagation algorithm to calculate orderliness of every individual effectively and efficiently. We validate the effectiveness of the proposed orderliness descriptor on synthetic simulation. Experimental results on challenging videos of real scene crowds demonstrate that orderliness descriptor can perceive motion with low smoothness and locate disorder.
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