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Detecting Violent Robberies in CCTV Videos Using Deep Learning

机译:使用深度学习检测CCTV视频中的暴力抢劫

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Video surveillance through security cameras has become difficult due to the fact that many systems require manual human inspection for identifying violent or suspicious scenarios, which is practically inefficient. Therefore, the contribution of this paper is twofold: the presentation of a video dataset called UNI-Crime, and the proposal of a violent robbery detection method in CCTV videos using a deep-learning sequence model. Each of the 30 frames of our videos passes through a pre-trained VGG-16 feature extractor; then, all the sequence of features is processed by two convolutional long-short term memory (convLSTM) layers; finally, the last hidden state passes through a series of fully-connected layers in order to obtain a single classification result. The method is able to detect a variety of violent robberies (i.e., armed robberies involving firearms or knives, or robberies showing different level of aggressiveness) with an accuracy of 96.69%.
机译:由于许多系统需要人工检查以识别暴力或可疑情况,因此通过安全摄像机进行视频监视已变得困难,实际上这是效率低下的。因此,本文的贡献是双重的:介绍称为UNI-Crime的视频数据集,以及使用深度学习序列模型对CCTV视频进行暴力抢劫检测方法的建议。我们视频的30帧中的每帧都经过预先训练的VGG-16特征提取器;然后,所有特征序列由两个卷积长期-短期记忆(convLSTM)层处理;最后,最后的隐藏状态通过一系列完全连接的层以获得单个分类结果。该方法能够检测各种暴力抢劫案(即涉及枪支或刀具的武装抢劫案,或表现出不同程度的攻击性的抢劫案),准确性为96.69%。

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