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Future Frame Prediction for Anomaly Detection - A New Baseline

机译:异常检测的未来帧预测-新基准

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Anomaly detection in videos refers to the identification of events that do not conform to expected behavior. However, almost all existing methods tackle the problem by minimizing the reconstruction errors of training data, which cannot guarantee a larger reconstruction error for an abnormal event. In this paper, we propose to tackle the anomaly detection problem within a video prediction framework. To the best of our knowledge, this is the first work that leverages the difference between a predicted future frame and its ground truth to detect an abnormal event. To predict a future frame with higher quality for normal events, other than the commonly used appearance (spatial) constraints on intensity and gradient, we also introduce a motion (temporal) constraint in video prediction by enforcing the optical flow between predicted frames and ground truth frames to be consistent, and this is the first work that introduces a temporal constraint into the video prediction task. Such spatial and motion constraints facilitate the future frame prediction for normal events, and consequently facilitate to identify those abnormal events that do not conform the expectation. Extensive experiments on both a toy dataset and some publicly available datasets validate the effectiveness of our method in terms of robustness to the uncertainty in normal events and the sensitivity to abnormal events. All codes are released in https://github.com/StevenLiuWen/ano_pred_cvpr2018.
机译:视频中的异常检测是指识别与预期行为不符的事件。然而,几乎所有现有方法都通过最小化训练数据的重构误差来解决该问题,这不能保证针对异常事件的更大的重构误差。在本文中,我们建议在视频预测框架内解决异常检测问题。据我们所知,这是第一项利用预测的未来框架与其基本事实之间的差异来检测异常事件的工作。为了预测正常事件质量更高的未来帧,除了强度和渐变上常用的外观(空间)约束之外,我们还通过在预测帧和地面实况之间强制光流,在视频预测中引入了运动(时间)约束帧保持一致,这是将时间约束引入视频预测任务的第一项工作。这样的空间和运动约束促进了对正常事件的未来帧预测,并因此有助于识别那些不符合预期的异常事件。在玩具数据集和一些公开可用的数据集上进行的大量实验,从对正常事件不确定性的鲁棒性和对异常事件的敏感性方面,验证了我们方法的有效性。所有代码均在https://github.com/StevenLiuWen/ano_pred_cvpr2018中发布。

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