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Abnormal Crowd Behavior Detection by Social Force Optimization

机译:社会力量优化对异常人群行为的检测

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摘要

We propose a new scheme for detecting and localizing the abnormal crowd behavior in video sequences. The proposed method starts from the assumption that the interaction force, as estimated by the Social Force Model (SFM), is a significant feature to analyze crowd behavior. We step forward this hypothesis by optimizing this force using Particle Swarm Optimization (PSO) to perform the advection of a particle population spread randomly over the image frames. The population of particles is drifted towards the areas of the main image motion, driven by the PSO fitness function aimed at minimizing the interaction force, so as to model the most diffused, normal, behavior of the crowd. In this way, anomalies can be detected by checking if some particles (forces) do not fit the estimated distribution, and this is done by a RANSAC-like method followed by a segmentation algorithm to finely localize the abnormal areas. A large set of experiments are carried out on public available datasets, and results show the consistent higher performances of the proposed method as compared to other state-of-the-art algorithms, proving the goodness of the proposed approach.
机译:我们提出了一种用于检测和定位视频序列中异常人群行为的新方案。所提出的方法始于以下假设:社会力量模型(SFM)估计的相互作用力是分析人群行为的重要特征。我们通过使用粒子群优化(PSO)优化此力以执行对散布在整个图像帧上的粒子总体的平流来推进这一假设。在PSO适应度函数的驱动下,粒子的数量向主图像运动区域漂移,该函数旨在最小化交互作用力,从而对人群中最分散,正常的行为进行建模。通过这种方式,可以通过检查某些粒子(力)是否不符合估计的分布来检测异常,这可以通过类似于RANSAC的方法以及随后的分割算法来精确定位异常区域。在公开的数据集上进行了大量实验,结果表明,与其他最新算法相比,该方法始终具有较高的性能,证明了该方法的优越性。

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