基于视频分组关注的交通监控视频异常行为检测算法

Liyuan Wang, S. Yu, Ling Ding, Yuanxu Wu, Yu Chen, Jinsheng Xiao
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引用次数: 0

摘要

本文提出了一种端到端的异常行为检测网络,用于检测交通监控视频中缓慢移动人群中的剧烈运动,如跑步、骑自行车等。该算法将连续视频帧组成视频包,并利用视频包特征提取器获取视频包的时空信息。隐式的基于向量的注意机制将对提取的视频包特征进行处理,突出重要的特征。我们使用全连接层来变换空间,减少计算量。最后,包池将处理后的视频包特征映射到异常分数。网络输入灵活应对视频流的形式,网络输出为异常分数。所设计的复合损失函数有助于提高模型的分类性能。本文整理了几种常用的异常检测数据集,并在综合数据集上对算法进行了测试。实验结果表明,与其他异常检测算法相比,该算法在许多客观指标上具有显著的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The anomaly behavior detection algorithm with video-packet attention in transportation surveillance videos
This paper proposes an end-to-end abnormal behavior detection network to detect strenuous movements in slow moving crowds, such as running, bicycling in transportation surveillance videos. The algorithm forms continuous video frames into a video packet and use the video packet feature extractor to obtain the spatio-temporal information. The implicit vector-based attention mechanism will work on the extracted video packet features to highlight the important features. We use fully connected layers to transform the space and reduce the computation. Finally, the packet-pooling maps the processed video packet features to the abnormal scores. The network input is flexible to cope with the form of video streams, and the network output is the abnormal score. The designed compound loss function will help the model improve the classification performance. This paper arranges several commonly used anomaly detection datasets and tests the algorithms on the integrated dataset. The experiment results show that the proposed algorithm has significant advantages in many objective metrics comparing with other anomaly detection algorithms.
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