基于社会力模型的人群异常行为检测

Ramin Mehran, Alexis Oyama, M. Shah
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引用次数: 1650

摘要

本文介绍了一种利用社会力模型对人群视频中的异常行为进行检测和定位的方法。为此,在图像上放置一个粒子网格,并将其与光流的时空平均值平流。将运动粒子视为个体,利用社会力模型估计其相互作用力。然后将相互作用力映射到图像平面上,得到每一帧中每个像素的force Flow。随机选择的力流时空体积用于模拟人群的正常行为。我们使用词包的方法将框架划分为正常和异常。利用相互作用力对异常框架中的异常区域进行定位。实验是在明尼苏达大学的一个公开可用的数据集上进行的,该数据集用于逃离恐慌场景,另一个具有挑战性的数据集来自网络上的人群视频。实验表明,该方法成功地捕捉到了人群行为的动态特征。此外,我们已经证明,社会力方法优于基于纯光流的类似方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal crowd behavior detection using social force model
In this paper we introduce a novel method to detect and localize abnormal behaviors in crowd videos using Social Force model. For this purpose, a grid of particles is placed over the image and it is advected with the space-time average of optical flow. By treating the moving particles as individuals, their interaction forces are estimated using social force model. The interaction force is then mapped into the image plane to obtain Force Flow for every pixel in every frame. Randomly selected spatio-temporal volumes of Force Flow are used to model the normal behavior of the crowd. We classify frames as normal and abnormal by using a bag of words approach. The regions of anomalies in the abnormal frames are localized using interaction forces. The experiments are conducted on a publicly available dataset from University of Minnesota for escape panic scenarios and a challenging dataset of crowd videos taken from the web. The experiments show that the proposed method captures the dynamics of the crowd behavior successfully. In addition, we have shown that the social force approach outperforms similar approaches based on pure optical flow.
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