基于拓扑方法的人群异常行为检测

Nan Li, Zhimin Zhang
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引用次数: 12

摘要

本文提出了一种新的拥挤场景异常行为检测框架。为此,将稠密场的拓扑简化理论推广到稀疏粒子运动场,用于描述群体的动力学。提出了两种新的粒子运动场边界点结构分析和临界点提取方法。这两种方法都可以用来描述人群运动的全局拓扑结构,这是我们工作的核心思想。通过监测拓扑结构的变化,可以检测到人群形成/分散、人群分裂/合并等各种类型的异常行为。该方法的优点是每一类异常事件都可以被描述为一个特定的拓扑结构变化,因此我们不需要复杂的分类器来检测这些异常。在已知的数据集上进行了实验,结果表明我们的方法可以有效地检测和定位这类异常行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal Crowd Behavior Detection Using Topological Methods
In this paper we present a novel framework for abnormal behavior detection in crowded scenes. For this purpose, the theory of topological simplification on the dense field is extended to the sparse particle motion field, which is used to describe the dynamics of the crowd. We propose two new methods for analysis of boundary point structure and extraction of critical point from the particle motion field. Both methods can be used to describe the global topological structure of the crowd motion, which is the kernel idea of our work. Various types of abnormal behaviors, including crowd formation/dispersal, crowds splitting/merging, can be detected by monitoring the changes of the topological structure. The advantage of our method is that each kind of abnormal event can be described as a specific topological structure change, therefore we do not need a complex classifier to detect these anomalies. Experiments are conducted on known datasets and results show that our method is effective in detecting and locating these kinds of abnormal behaviors.
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