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Global anomaly detection in crowded scenes based on optical flow saliency

机译:基于光流显着性的拥挤场景全局异常检测

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In this paper, an algorithm of global anomaly detection in crowded scenes using the saliency in optical flow field is proposed. Before the process of extracting the histogram of maximal optical flow projection (HMOFP), the scale invariant feature transforms (SIFT) method is utilized to get the saliency map of optical flow field. On the basis of the HMOFP feature of normal frames, the online dictionary learning algorithm is used to train an optimal dictionary with proper redundancy after a process of selecting the training samples, which is better than the dictionary simply composed by the HMOFP feature of the whole training frames. In order to detect whether a frame is normal or not, we use the ℓ1-norm of the sparse reconstruction coefficients (i.e., the sparse reconstruction cost, SRC) to show the anomaly of the testing frame, which is simple but very effective. The experiment results on UMN dataset and the comparison to the state-of-the-art methods show that our algorithm is promising.
机译:提出了一种利用光流场的显着性在拥挤场景中进行全局异常检测的算法。在提取最大光流投影直方图(HMOFP)之前,利用尺度不变特征变换(SIFT)方法获得光流场的显着图。基于正常帧的HMOFP特征,在选择训练样本后,采用在线字典学习算法对具有适当冗余度的最优字典进行训练,这比单纯由整体的HMOFP特征组成的字典要好。训练框架。为了检测框架是否正常,我们使用稀疏重建系数的ℓ1-范数(即稀疏重建成本SRC)来显示测试框架的异常,这很简单但非常有效。在UMN数据集上的实验结果以及与最新方法的比较表明,我们的算法是有前途的。

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