基于全稀疏主题模型的交通视频异常检测

Razie Kaviani, P. Ahmadi, I. Gholampour
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引用次数: 21

摘要

对拥挤交通场景中典型活动的自动分析和理解,以及异常事件的识别,是交通视频监控的基本任务。在本文中,我们解决了基于全稀疏主题模型(FSTM)的无监督学习方法的异常检测问题。该方法利用一组视觉特征,自动发现复杂场景中发生的活动模式。我们将展示如何使用发现的模式来检测异常事件。此外,我们将FSTM与基于各种度量的其他主题模型进行了比较。实验结果和两个交通数据集的对比表明,我们的方法在寻找有意义的活动模式和准确发现异常事件方面优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating fully sparse topic models for abnormality detection in traffic videos
Automatic analysis and understanding of typical activities and identification of abnormal events in crowded traffic scenes is a fundamental task for traffic video surveillance. In this paper, we address the problem of abnormality detection based on an unsupervised learning approach with Fully Sparse Topic Models (FSTM). The method uses a set of visual features and automatically discovers the activity patterns occurring in complicated scenes. We show how the discovered patterns can be used to detect abnormal events. Furthermore, we compare FSTM with other topic models based on various measures. Experimental results and comparisons on two traffic datasets demonstrate that our approach outperforms other methods in finding meaningful activity patterns and discovers the abnormal events accurately.
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