Video Anomaly Detection Using Encoder-Decoder Networks with Video Vision Transformer and Channel Attention Blocks

Shimpei Kobayashi, A. Hizukuri, R. Nakayama
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Abstract

A surveillance camera has been introduced in various locations for public safety. However, security personnel who have to keep observing surveillance camera movies with few abnormal events would be boring. The purpose of this study is to develop a computerized anomaly detection method for the surveillance camera movies. Our database consisted of three public datasets for anomaly detection: UCSD Pedestrian 1, 2, and CUHK Avenue datasets. In the proposed network, channel attention blocks were introduced to TransAnomaly which is one of the anomaly detections to focus important channel information. The areas under the receiver operating characteristic curves (AUCs) with the proposed network were 0.827 for UCSD Pedestrian 1, 0.964 for UCSD Pedestrian 2, and 0.854 for CUHK Avenue, respectively. The AUCs for the proposed network were greater than those for a conventional TransAnomaly without channel attention blocks (0.767, 0.934, and 0.839).
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基于视频视觉变压器和信道注意块的编码器-解码器网络的视频异常检测
为保障公众安全,在多个地点安装了监控摄像头。但是,如果保安人员一直盯着监控录像看,几乎没有什么异常事件,那就太无聊了。本研究的目的是开发一种针对监控摄影机影像的电脑异常侦测方法。我们的数据库包括三个用于异常检测的公共数据集:UCSD行人1、2和中大大道数据集。在TransAnomaly中引入了通道注意块,这是一种聚焦重要通道信息的异常检测方法。UCSD行人通道1号、UCSD行人通道2号及中大大道的接收人工作特征曲线(auc)下面积分别为0.827、0.964及0.854。该网络的auc大于没有通道注意块的传统TransAnomaly(0.767, 0.934和0.839)。
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