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Detecting anomalous crowd scenes by oriented Tracklets' approach in active contour region

机译:通过活动轮廓区域中定向Tracklets的方法检测异常人群场景

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Video imagery based crowd analysis has become a topic of great interest for public safety at the venues of mass gathering events. This paper presents a novel approach to detect anomalous scene in high density crowded places. We propose an oriented tracklets approach in active contour region and measure the entropy and temporal occupancy deviation of oriented tracklets over the frames. To this end, an oriented trajectory algorithm is designed to extract tracklets of moving crowd. For trajectory extraction, spatio-temporal interest points are detected by adopting Harris corner features. The detected interest points are tracked over the frames within the optimized region. An active contour segmentation approach is applied to optimize the tracking region as a moving crowd is not distributed in entire frame region. The flow direction of each oriented tracklet is distributed into histogram bins at a specified interval, which defines the flow of collective motion pattern. A real-time scene updating procedure is also followed to adapt the changes of crowd scenes. Further, an entropy of histogram of oriented tracklets is computed based on the probability of occurrence of the tracklets. It has been shown that entropy of flow direction changes markedly in the unusual state of affairs. A simulation on a large number of the anomalous scene has been exercised to see the characteristics of an entropy. Also, temporal occupancy deviation is computed which measures the area occupied by the extracted tracklets of the crowd during a certain interval of time. If entropy and temporal occupancy deviation increase beyond a certain threshold, an alert is issued to detect anomaly to prevent potentially dangerous crowd-related disasters. Experiments conducted on three publicly available benchmark crowd datasets such as UMN, UCF Web, and Violent Flows, obtained interesting and promising results. We also evaluated some manually collected challenging real-world crowd video sequences. We compared the proposed approach with various state-of-the-art methods, and achieve remarkable accuracy while maintaining the lower computational complexity.
机译:基于视频图像的人群分析已成为群众聚集活动场所公共安全的重要话题。本文提出了一种新颖的方法来检测高密度拥挤场所中的异常场景。我们提出了主动轮廓区域中的定向小径方法,并测量了框架上定向小径的熵和时间占用偏差。为此,设计了一种定向轨迹算法来提取移动人群的小轨迹。对于轨迹提取,通过采用哈里斯角点特征来检测时空兴趣点。在优化区域内的帧上跟踪检测到的兴趣点。由于移动人群未分布在整个帧区域中,因此采用了主动轮廓分割方法来优化跟踪区域。每个定向小波的流动方向以指定的间隔分布到直方图bin中,这定义了集体运动模式的流动。还遵循实时场景更新过程以适应人群场景的变化。此外,基于小轨迹的出现概率来计算定向小轨迹的直方图的熵。研究表明,在异常状态下,流动方向的熵显着变化。已对大量异常场景进行了模拟,以查看熵的特征。同样,计算时间占用偏差,该偏差测量在一定时间间隔内所提取的人群小径所占据的面积。如果熵和时间占用偏差增加到某个阈值以上,则会发出警报以检测异常,以防止潜在的危险人群相关灾难。在三个公开可用的基准人群数据集(如UMN,UCF Web和暴力流)上进行的实验获得了有趣而有希望的结果。我们还评估了一些人工收集的具有挑战性的现实人群视频序列。我们将提出的方法与各种最新方法进行了比较,并在保持较低计算复杂度的同时实现了卓越的准确性。

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