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Abnormal Event Detection on BMTT-PETS 2017 Surveillance Challenge

机译:BMTT-PETS 2017监控挑战赛异常事件检测

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In this paper, we have proposed a method to detect abnormal events for human group activities. Our main contribution is to develop a strategy that learns with very few videos by isolating the action and by using supervised learning. First, we subtract the background of each frame by modeling each pixel as a mixture of Gaussians (MoG) to concatenate the higher order learning only on the foreground. Next, features are extracted from each frame using a convolutional neural network (CNN) that is trained to classify between normal and abnormal frames. These feature vectors are fed into long short term memory (LSTM) network to learn the long-term dependencies between frames. The LSTM is also trained to classify abnormal frames, while extracting the temporal features of the frames. Finally, we classify the frames as abnormal or normal depending on the output of a linear SVM, whose input are the features computed by the LSTM.
机译:在本文中,我们提出了一种检测人类群体活动异常事件的方法。我们的主要贡献是制定一种策略,通过隔离动作并使用监督学习来以很少的视频进行学习。首先,我们通过将每个像素建模为高斯(MoG)的混合物来减去每个帧的背景,以仅在前景上串联高阶学习。接下来,使用经过训练在正常帧和异常帧之间进行分类的卷积神经网络(CNN)从每个帧中提取特征。这些特征向量被馈送到长期短期记忆(LSTM)网络中,以学习帧之间的长期依存关系。 LSTM还经过训练以对异常帧进行分类,同时提取帧的时间特征。最后,我们根据线性SVM的输出将帧分类为异常帧还是正常帧,线性SVM的输入是LSTM计算的特征。

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