Region-Based Anomaly Localisation in Crowded Scenes via Trajectory Analysis and Path Prediction

Teng Zhang, A. Wiliem, B. Lovell
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引用次数: 5

Abstract

In this paper, we propose an approach for locating anomalies in crowded scene for surveillance videos. In contrast to the previous approaches, the proposed approach does not rely on traditional tracking techniques which tend to fail in crowed scenes. Instead the anomalies are tracked based on the information taken from a set of anomaly classifiers. To this end, each video frame is divided into non- overlapping regions wherein a set of low-level features are extracted. After that, we apply the anomaly classifiers which determine whether there is anomaly in each region. We then derive the anomaly trajectory by connecting the anomalous regions temporarily across the video frames. Finally, we propose path prediction using linear Support Vector Machine (SVM) to smooth the trajectory. By doing this, we will able to better locate them in the crowded scene. We tested our approach on UCSD Anomaly Detection dataset which contains crowded scenes and achieved notable improvement over the state-of-the-art results without sacrificing computational simplicity.
基于轨迹分析和路径预测的拥挤场景区域异常定位
本文提出了一种用于监控视频拥挤场景的异常定位方法。与之前的方法相比,该方法不依赖于传统的跟踪技术,而传统的跟踪技术在拥挤的场景中往往会失败。相反,异常是基于从一组异常分类器中获取的信息来跟踪的。为此,将每个视频帧划分为不重叠的区域,在这些区域中提取一组低级特征。然后,我们应用异常分类器来判断每个区域是否存在异常。然后,我们通过在视频帧中临时连接异常区域来推导异常轨迹。最后,我们提出了使用线性支持向量机(SVM)来平滑轨迹的路径预测方法。通过这样做,我们将能够在拥挤的场景中更好地定位它们。我们在UCSD异常检测数据集上测试了我们的方法,该数据集包含拥挤的场景,并且在不牺牲计算简单性的情况下取得了显著的改进。
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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