Abnormal Event Detection from Surveillance Video by Dynamic Hierarchical Clustering

Fan Jiang, Ying Wu, A. Katsaggelos
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引用次数: 83

Abstract

The clustering-based approach for detecting abnormalities in surveillance video requires the appropriate definition of similarity between events. The HMM-based similarity defined previously falls short in handling the overfitting problem. We propose in this paper a multi-sample-based similarity measure, where HMM training and distance measuring are based on multiple samples. These multiple training data are acquired by a novel dynamic hierarchical clustering (DHC) method. By iteratively reclassifying and retraining the data groups at different clustering levels, the initial training and clustering errors due to overfitting will be sequentially corrected in later steps. Experimental results on real surveillance video show an improvement of the proposed method over a baseline method that uses single-sample-based similarity measure and spectral clustering.
基于动态层次聚类的监控视频异常事件检测
基于聚类的监控视频异常检测方法需要对事件之间的相似性进行适当的定义。先前定义的基于hmm的相似度在处理过拟合问题方面存在不足。本文提出了一种基于多样本的相似性度量方法,其中HMM训练和距离度量是基于多样本的。这些训练数据通过一种新的动态层次聚类(DHC)方法获得。通过对不同聚类水平的数据组进行迭代重分类和再训练,在后续步骤中依次纠正初始训练和过拟合引起的聚类误差。在真实监控视频上的实验结果表明,该方法比基于单样本的相似度度量和谱聚类的基线方法有所改进。
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