Abnormal Event Detection in Video Based on Sparse Representation

Xinlu Zong, Yijie Chen, Aiping Liu, Ruicheng Li, Shiqin Liu, Han Yu, Min Tan
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引用次数: 1

Abstract

As a research hotspot in intelligent video surveillance system, abnormal event detection has attracted the attention of many researchers in recent years. In order to overcome the shortcoming of the semi-supervised model, that is, the training sample is difficult to contain all possible situations, which leads to the occurrence of error detection, we propose a method based on sparse representation. The principle of this method is to train the model with normal data and abnormal data respectively, get two sparse representation models, and then judge whether there are abnormal events according to the results of the two models. The method has passed the test of the existing data sets and achieved good results.
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基于稀疏表示的视频异常事件检测
异常事件检测作为智能视频监控系统中的一个研究热点,近年来受到了众多研究者的关注。为了克服半监督模型的缺点,即训练样本难以包含所有可能的情况,从而导致错误检测的发生,我们提出了一种基于稀疏表示的方法。该方法的原理是分别用正常数据和异常数据训练模型,得到两个稀疏表示模型,然后根据两个模型的结果判断是否存在异常事件。该方法通过了现有数据集的测试,取得了良好的效果。
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