Deep-3DConvNet:一种检测大型商店异常活动的网络

Mohd. Aquib Ansari, D. Singh
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引用次数: 0

摘要

这些天来,在大型超市/商店里,人类异常行为的案例迅速增加,人们在没有人看到的情况下偷窃、消费或打开包裹,然后不付钱就离开了。这种不寻常的行为造成了巨大的商业损失。因此,迫切需要引起研究界的关注,以检测特大商场的异常事件。为了解决这个问题,我们设计了一个先进的三维卷积神经体系结构来识别大卖场的异常活动。该网络深度为15层,以分辨率为120× 120的视频流为输入,产生分类结果作为输出。它使用小尺寸和大尺寸的3D卷积过滤器从视频提要中提取微调和一般细节,并将它们分类为各自的类。所提出的架构在一个合成动作数据集上进行训练和测试,该数据集由人类行为组成,分为五类:正常、偷窃、吃、喝和破坏行为。实验结果表明,我们的模型以88.88%的准确率优于其他最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-3DConvNet: A Network to Detect Abnormal Activities at Megastores
These days, there has been a rapid increase in cases of abnormal human behavior at megastores/shops, where people commit theft by stealing, consuming, or unwrapping packets when no one is seeing and then leaving the place without paying. Such unusual actions cause huge losses in business. Therefore, there is an urgent need to attract the research community's attention to detect abnormal events at megastores. To address this issue, we have designed an advanced three-dimensional convolutional neural architecture to identify abnormal activities at megastores. The proposed network is 15 layers deep, takes a video stream of resolution 120× 120 as input, and produces classification results as output. It extracts fine-tuned as well as general details from the video feed using small and large-sized 3D convolutional filters and categorizes them into respective classes. The proposed architecture is trained and tested on a synthesized action dataset that consists of human actions distributed into five classes: normal, stealing, eating, drinking, and damaging acts. Experimental results show that our model outperforms other state-of-the-art approaches with an accuracy of 88.88%.
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