时空深度特征AP聚类的稀疏表示视频异常检测算法

Video anomaly detection by AP clustering sparse representation based on spatial-temporal deep feature model

  • 摘要: 针对异常行为检测问题, 提出基于时空深度特征的AP聚类稀疏表示视频异常检测方法。由于视频序列中大量背景信息及有效信息分布不均匀的情况,首先利用光流结合非均匀的细胞分割对视频的运动目标进行提取并得到空间尺寸大小不同的时空兴趣块。其次利用三维卷积神经网络提取不同时空兴趣块的时空深度特征从而对原始视频序列进行三维描述。然后在字典学习时,采用AP聚类方法,将训练样本中具有代表性的特征作为字典,极大降低字典维度以及稀疏表示方法对计算内存的要求。本文将测试样本进行AP聚类后仅对具有代表性的聚类中心进行检测,在减少实验时间的同时削减了阈值对检测效果的敏感度。实验结果表明,与现有的检测方法相比本文方法具有优越性。

     

    Abstract: Aiming at the problem of abnormal behavior detection, an AP clustering sparse representation video anomaly detection method based on spatiotemporal depth features is proposed.In view of the uneven distribution of large amount of background information and effective information in the video sequence, the optical flow method combined with non-uniform cell segmentation is used to extract the moving targets of the video and obtain the spatial temporal interest cuboid with different spatial sizes.The three-dimensional convolutional neural network is used to extract the spatial-temporal deep features of different spatial temporal interest cuboids to describe the original video sequence in three dimensions. Aiming at the big data problem of deep learning method, we apply the AP clustering method in dictionary learning, and the representative feature of the training sample is add to the dictionary, which greatly reduces the dictionary dimension and reduces the memory requirement of sparse representation. The test samples are clustered by AP and only the representative cluster centers are detected. The time for computation will be reduced and the detection effect is not sensitive to threshold. The experimental results show that the proposed method is superior to the existing detection methods.

     

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