A Context Space Model for Detecting Anomalous Behaviour in Video Surveillance

A. Wiliem, V. Madasu, W. Boles, P. Yarlagadda
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引用次数: 11

Abstract

An automatic anomalous human behaviour detection is one of the goals of smart surveillance systems' domain of research. The automatic detection addresses several human factor issues underlying the existing surveillance systems. To create such a detection system, contextual information needs to be considered. This is because context is required in order to understand human behaviour. Unfortunately, the use of contextual information is still limited in the automatic anomalous human behaviour detection approaches. This paper proposes a context space model which has two benefits: (a) It provides guidelines for the system designers to select information which can be used to describe context, (b) It enables a system to distinguish between different contexts. A comparative analysis is conducted between a context-based system which employs the proposed context space model and a system which is implemented based on one of the existing approaches. The comparison is applied on a scenario constructed using video clips from CAVIAR dataset. The results show that the context-based system outperforms the other system. This is because the context space model allows the system to consider knowledge learned from the relevant context only.
视频监控中异常行为检测的上下文空间模型
人类异常行为的自动检测是智能监控系统研究的目标之一。自动检测解决了现有监视系统背后的几个人为因素问题。要创建这样的检测系统,需要考虑上下文信息。这是因为为了理解人类的行为,语境是必要的。不幸的是,上下文信息在人类异常行为自动检测方法中的使用仍然有限。本文提出了一个上下文空间模型,它有两个好处:(a)它为系统设计者选择可用于描述上下文的信息提供了指导方针,(b)它使系统能够区分不同的上下文。对采用本文提出的上下文空间模型的基于上下文的系统和基于现有方法实现的系统进行了比较分析。将比较应用于使用来自CAVIAR数据集的视频片段构建的场景。结果表明,基于上下文的系统优于其他系统。这是因为上下文空间模型允许系统只考虑从相关上下文中学习到的知识。
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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