视频监控中运动模式分析的聚类模式

R. Rupasinghe, S. G. M. P. Senanayake, D. A. Padmasiri, Mevan Ekanayake, G. Godaliyadda, J. Wijayakulasooriya
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引用次数: 11

摘要

本文介绍了一套用于视频监控中运动模式分析的工具。对于给定的视频流,首先提取运动轨迹并构造亲和矩阵。然后,基于归一化谱聚类进行运动模式分析。提出了一种基于Eigengap的聚类数量确定方法。我们观察到,在现实生活场景中,根据人类的感知,观察到的集群数量并不是一个全局常数,它实际上可以根据缩放程度取多个值。因此,引入了一个称为“集群模式”的新概念,其中“模式”对应于给定场景中存在的多个集群安排。簇的数量和这些簇内轨迹的排列作为每一个这样的“模式”的描述符。标准谱聚类算法中的自由参数Sigma可以用作缩放工具。因此,引入了“西格玛扫描”作为检测重要模式的方法。因此,提出了一种更细致、更准确、更能反映人的感知的表示方法,并通过实例阐述了其在视频监控中的适用性。
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Modes of clustering for motion pattern analysis in video surveillance
This work introduces a set of tools for motion pattern analysis in video surveillance. For a given video stream, first the motion trajectories are extracted and an affinity matrix is constructed. Then, motion pattern analysis is conducted based on Normalized Spectral Clustering. An Eigengap based methodology is proposed for determining the number of clusters. It was observed that in real life scenarios, according to human perception, the number of clusters observed is not a global constant, that it actually can take multiple values based on the level of zooming. Thus, a novel concept called ‘Modes of Clustering’ is introduced, where ‘Modes’ correspond to the multiple clustering arrangements that exist for a given scenario. The number of clusters and the arrangement of trajectories within those clusters serve as a descriptor for each such ‘Mode’. The free parameter Sigma in the standard Spectral Clustering algorithm, can be used as a tool for zooming. Accordingly, a ‘Sigma Sweep’ is introduced as a methodology for detecting the significant modes. Hence, a more detailed and accurate representation closely reflecting human perception is proposed and its applicability for video surveillance is elaborated through a case study.
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