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Remembering history with convolutional LSTM for anomaly detection

机译:记住卷积LSTM的历史,用于异常检测

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This paper tackles anomaly detection in videos, which is an extremely challenging task because anomaly is unbounded. We approach this task by leveraging a Convolutional Neural Network (CNN or ConvNet) for appearance encoding for each frame, and leveraging a Convolutional Long Short Term Memory (ConvLSTM) for memorizing all past frames which corresponds to the motion information. Then we integrate ConvNet and ConvLSTM with Auto-Encoder, which is referred to as ConvLSTM-AE, to learn the regularity of appearance and motion for the ordinary moments. Compared with 3D Convolutional Auto-Encoder based anomaly detection, our main contribution lies in that we propose a ConvLSTM-AE framework which better encodes the change of appearance and motion for normal events, respectively. To evaluate our method, we first conduct experiments on a synthesized Moving-MNIST dataset under controlled settings, and results show that our method can easily identify the change of appearance and motion. Extensive experiments on real anomaly datasets further validate the effectiveness of our method for anomaly detection.
机译:本文在视频中解决异常检测,这是一个极具挑战性的任务,因为异常是无限的。我们通过利用一个卷积神经网络(CNN或ConvNet)外观编码对于每个帧,和利用卷积长短期记忆(ConvLSTM),用于存储所有过去帧对应于运动信息接近此任务。然后,我们将Convnet和Convlstm与自动编码器集成,称为Convlstm-AE,以了解普通时刻的外观和运动的规律性。与基于3D卷积自动编码器的异常检测相比,我们的主要贡献在于,我们提出了一个Convlstm-AE框架,它们分别更好地编码了外观和运动的变化。为了评估我们的方法,我们首先在受控设置下对合成的移动Mnist数据集进行实验,结果表明我们的方法可以容易地识别外观和运动的变化。真正的异常数据集的广泛实验进一步验证了我们对异常检测方法的有效性。

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