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Weak Supervised Learning Based Abnormal Behavior Detection

机译:基于弱监督学习的异常行为检测

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Artificial features are adopted in most of the existing abnormal behavior detection. However, it is difficult to choose and design an effective behavior feature for the reason of highly computational complexity and complex scenarios. To solve this problem, temporal consistency based weak supervised abnormal behavior detection method is proposed in this paper. First, temporal gram matrices are constructed for a given video sequence. Then, a pair of behavior units (Candidate action fragment) are formed by exploiting the temporal consistency and the smoothness of human behavior, which helps to locate the start frame and end frame of the related class of abnormal behavior in the video sequence to train the corresponding classifier. Finally, sparse reconstruction is here utilized to detect abnormal behavior. Experiments conducted on common database including CAVIAR and Crossing demonstrate the effectiveness of the proposed method.
机译:现有的大多数异常行为检测都采用了人工特征。然而,由于高度的计算复杂性和复杂的场景,难以选择和设计有效的行为特征。针对这一问题,提出了一种基于时间一致性的弱监督异常行为检测方法。首先,为给定的视频序列构造时间语法矩阵。然后,通过利用人类行为的时间一致性和平滑性来形成一对行为单元(候选动作片段),这有助于在视频序列中定位相关类别的异常行为的开始帧和结束帧以训练相应的分类器。最后,这里利用稀疏重建来检测异常行为。在包括CAVIAR和Crossing在内的通用数据库上进行的实验证明了该方法的有效性。

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