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Multi-scale analysis of contextual information within spatio-temporal video volumes for anomaly detection

机译:时空视频量内上下文信息的多尺度分析,用于异常检测

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In this paper, we present a novel approach for video anomaly detection in crowded scenes. The proposed approach detects anomalies based on the contextual information analysis within spatio-temporal video volume. Around each pixel, spatio-temporal volumes are built and clustered to construct the activity pattern codebook. Then, the composition information of the volumes within a large spatiotemporal window is described via a dictionary learned by sparse representation. Furthermore, multi-scale analysis is employed to adapt the size change of abnormal events. Finally, the sparse reconstruction cost is designed to evaluate the abnormal level of an input motion pattern. We demonstrate the efficiency of the proposed method on the existing public available anomaly-detection datasets and the performance comparasion with three existing methods validates that the proposed method detects anomalies more accurately.
机译:在本文中,我们提出了一种在拥挤场景中进行视频异常检测的新颖方法。所提出的方法基于时空视频量内的上下文信息分析来检测异常。在每个像素周围,建立时空体并将其聚类以构造活动模式码本。然后,通过稀疏表示学习的字典来描述大时空窗口内的卷的组成信息。此外,采用多尺度分析来适应异常事件的大小变化。最后,稀疏的重建成本被设计为评估输入运动模式的异常水平。我们在现有的公共可用异常检测数据集上证明了该方法的效率,并且与三种现有方法的性能比较证明了该方法可以更准确地检测异常。

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