基于注意机制的CNN-LSTM异常行为识别

Nian Chi Tay, C. Tee, T. Ong, Pin Shen Teh
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引用次数: 10

摘要

当今社会安全问题呈上升趋势。每隔一段时间,世界各地都会有抢劫、战斗或恐怖主义等新闻。因此,需要采取一些强有力的措施来确保公共安全。这就是计算机视觉技术发挥作用的时候。传统的监控摄像机缺乏对视频中异常行为的自主检测能力,因此对异常活动的判断完全依赖于人的判断。什么是异常行为没有绝对的含义,它取决于设置。例如,在武术课上打架是正常的行为,但如果在银行里打架,则被认为是异常行为。在本研究中,我们关注两个范围:两人互动和基于人群的互动。基于注意机制模型的卷积神经网络-长短期记忆(CNN-LSTM)可以自动从视频帧中提取重要特征,并解释视频序列之间的时间信息。与典型的神经网络不同,我们的模型包含了关注人类行为突出部分的注意机制。使用五个基准数据集来验证所提出模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal Behavior Recognition using CNN-LSTM with Attention Mechanism
There is a rising trend of security issues in our society nowadays. Every now and then, there are news such as robberies, fighting or terrorism around the world. Hence, some robust measurements need to be done to ensure public safety. This is when computer vision techniques come into play. Conventional surveillance cameras lack the capability of autonomously detecting abnormal behaviors in footages, and hence the determination of abnormal activities is solely dependent on human judgement. There is no absolute meaning of what abnormal behavior is, it depends on the settings. For example, fighting in a martial art class is a normal behavior, however if there is fighting in a bank, it is considered as abnormal behavior. In this study, we focus on two scopes: two-persons interactions and crowd-based interactions. Our Convolutional Neural Network-Long Short-Term Memory (CNN-LSTM) with attention mechanism model can automatically extract the important features from the video frames and interpret the temporal information between the video sequences. Different from the typical neural networks, our model includes attention mechanism that focuses on salient part of human action. Five benchmark datasets are used to validate the performance of the proposed model.
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