基于立体摄像机队列分析的异常行为检测

J. L. Patino, J. Ferryman, Csaba Beleznai
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引用次数: 18

摘要

在本文中,我们对排队的人的行为进行了分析,目的是以无监督的方式发现正在进行的不寻常或可疑的活动。我们关注的主要活动类型是检测在队列周围闲逛的人,以及与队列流动相反或采取可疑路径的人。该方法首先从立体深度图中实时检测和跟踪移动的个体。然后使用基于软计算的算法自动学习活动区域(包括队列区域),该算法将检测到的移动物体的轨迹作为输入。区域占用和区域间转换的统计特性使发现异常成为可能,而无需事先学习异常模型。该方法已经在一个真实地代表边界过境及其环境的数据集上进行了测试。目前的结果表明,所提出的方法构成了一个鲁棒的知识发现工具,能够提取队列异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal behaviour detection on queue analysis from stereo cameras
In this paper we perform an analysis of human behaviour for people standing in a queue with the aim to discover, in an unsupervised way, ongoing unusual or suspicious activities. The main activity types we focus on are detecting people loitering around the queue and people going against the flow of the queue or undertaking a suspicious path. The proposed approach works by first detecting and tracking moving individuals from a stereo depth map in real time. Activity zones (including queue zones) are then automatically learnt employing a soft computing-based algorithm which takes as input the trajectory of detected mobile objects. Statistical properties on zone occupancy and transition between zones makes it possible to discover abnormalities without the need to learn abnormal models beforehand. The approach has been tested on a dataset realistically representing a border crossing and its environment. The current results suggest that the proposed approach constitutes a robust knowledge discovery tool able to extract queue abnormalities.
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