Abnormal crowd event detection based on outlier in time series

Wei-Lieh Hsu, Yu-Cheng Wang, Chih-Lung Lin
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引用次数: 2

Abstract

Crowd management research shows a lack of depth in the literature insofar as most major incidents can be prevented or minimized by a proper management strategy. Specifically, if abnormal crowd events can be detected early and the relevant governing agency can take appropriate actions towards mitigating the dangers, accidental injury can be prevented or the incident can be contained. This paper presents a technical approach to gather the required crowd data using fixed cameras to collect visual data while using a grid model to describe the crowd distribution. The measured area will be divided into several unit areas and each unit area is considered to be a simple cell in a grid model. The state value of each unit area is determined by changes in the total number of active pixels within the unit area. Under the circumstances, the motion status of the measured area is represented by a dynamic state matrix, which will save computing time. Should abnormal crowd events develop, a crowd tends to attempt to quickly leave the area and the resultant crowd distribution changes accordingly. Thus, we expect the crowd distribution to have a sudden and significant change as the abnormal crowd event unfolds. According to the Uniqueness Theorem, crowd distribution in the grid model can be described by a series of different order moments. To consider the normalization, the Chebyshev moment is used to describe the status distribution in the grid model of each image and a time series is used to describe the varying features of the two adjacent images in the video data. When unusual events occur, the status distribution in the grid model between images will show more obvious changes within a short period of time. We can use an outlier detection method to detect the extreme values and also identify the type of outlier: additive outliers or innovational outliers are used to determine the cause of abnormal feature variation.
基于时间序列离群点的异常人群事件检测
人群管理研究表明,在大多数重大事件可以通过适当的管理策略来预防或最小化的情况下,文献缺乏深度。具体来说,如果能够及早发现异常人群事件,相关管理机构可以采取适当的行动来减轻危险,就可以预防意外伤害或控制事件。本文提出了一种利用固定摄像机采集视觉数据,同时利用网格模型描述人群分布的技术方法。测量的面积将被划分为若干个单位面积,每个单位面积被认为是网格模型中的一个简单单元。每个单位面积的状态值由单位面积内活动像素总数的变化决定。在这种情况下,被测区域的运动状态用动态矩阵表示,这样可以节省计算时间。如果出现异常的人群事件,人群往往会试图迅速离开该区域,由此产生的人群分布也会发生相应的变化。因此,我们预计随着异常人群事件的展开,人群分布会发生突然而显著的变化。根据唯一性定理,人群在网格模型中的分布可以用一系列不同阶矩来描述。为了考虑归一化,使用切比雪夫矩来描述每个图像在网格模型中的状态分布,并使用时间序列来描述视频数据中相邻两幅图像的变化特征。当异常事件发生时,网格模型中图像之间的状态分布会在短时间内表现出更明显的变化。我们可以使用离群值检测方法来检测极值,也可以识别离群值的类型:使用加性离群值或创新离群值来确定异常特征变化的原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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