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A hybrid swarm intelligence based approach for abnormal event detection in crowded environments

机译:在人群拥挤的环境中基于混合群智能的异常事件检测方法

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In this paper, we propose a hybrid swarm intelligence based approach to tackle the problem of abnormal event detection in crowded environments in surveillance videos. In the proposed approach, a video frame is subjected to a series of operations to extract most salient information from it. Initially, a novel discriminative 2D variance plane corresponding to (and equal in dimensions to) each video frame is constructed in which the value at each pixel location represents the variance of optical flow field magnitude in the local spatio-temporal neighborhood of that pixel. Consequently, a modified ant colony optimization (ACO) clustering algorithm is employed to partition the 2D variance plane into salient and non-salient clusters. The cluster with salient pixels represents the regions of a video frame where optical flow variations inside the local spatio-temporal neighborhood of a pixel are high and is selected for further computation. Finally, a novel predator-prey algorithm is implemented and predators are advected over the prey values in the selected cluster to compute histogram of swarms (HOS) for a particular frame. The proposed approach outperforms state of the art on two commonly used datasets in our experiments, i.e., UMN crowd anomaly dataset and UCF web dataset. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种基于混合群智能的方法,以解决监视视频中拥挤环境中异常事件检测的问题。在提出的方法中,对视频帧进行一系列操作以从中提取最显着的信息。最初,构造对应于每个视频帧(并且在尺寸上等于)的新颖的判别性2D方差平面,其中每个像素位置的值表示该像素的局部时空邻域中的光流场大小的方差。因此,采用改进的蚁群优化(ACO)聚类算法将2D方差平面划分为显着和非显着群集。具有显着像素的群集表示视频帧的区域,在该区域中,像素的局部时空邻域内的光流变化较高,并选择进行进一步计算。最后,实现了一种新颖的捕食者-猎物算法,并将掠食者平移到所选簇中的猎物值上,以计算特定帧的群体直方图(HOS)。在我们的实验中,该方法在两个常用数据集(即UMN人群异常数据集和UCF网络数据集)上的表现优于现有技术。 (C)2019 Elsevier B.V.保留所有权利。

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