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Fast anomaly detection in traffic surveillance video based on robust sparse optical flow

机译:基于鲁棒稀疏光流的交通监控视频异常快速检测

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Fast abnormal events detection in video is important for intelligent analysis of video. This paper proposes a fast anomaly detection algorithm based on sparse optical flow. We improve the efficiency of optical flow computation with foreground mask and spacial sampling and increase the robustness of optical flow with good feature (TK) points selecting and forward-backward filtering. A foreground channel is also added to the feature vector to help detect static or low speed objects. The algorithm is validated on real-life traffic surveillance to prove its effectiveness. It is also evaluated on a benchmark dataset and achieve detection results comparable to state-of-art methods and outperforms them at pixel-level when the false alarm rate is low. The strength of our algorithm is that it runs real-time on the benchmark dataset which is hundreds of times faster than comparative methods.
机译:快速检测视频中的异常事件对于智能分析视频非常重要。提出了一种基于稀疏光流的快速异常检测算法。我们通过前景遮罩和空间采样提高了光流计算的效率,并通过良好特征(TK)点选择和前向后向滤波提高了光流的鲁棒性。前景通道也被添加到特征向量,以帮助检测静态或低速物体。该算法在现实交通监控中得到验证,证明了其有效性。还可以在基准数据集上对其进行评估,并获得与最新方法相当的检测结果,并在误报率较低时在像素级别上胜过它们。我们算法的优势在于它可以在基准数据集上实时运行,比比较方法快数百倍。

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