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Detecting Suspicious Behavior on Surveillance Videos: Dealing with Visual Behavior Similarity between Bystanders and Offenders

机译:检测监视视频的可疑行为:处理旁观者和违法者之间的视觉行为相似之处

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摘要

Suspicious behavior is likely to threaten security, assets, life, or freedom. This behavior has no particular pattern, which complicates the tasks to detect it and define it. Even for human observers, it is complex to spot suspicious behavior in surveillance videos. Some proposals to tackle abnormal and suspicious behavior-related problems are available in the literature. However, they usually suffer from high false-positive rates due to different classes with high visual similarity. The PreCrime Behavior method removes information related to a crime commission to focus on suspicious behavior before the crime happens. The resulting samples from different types of crime have a high-visual similarity with normal-behavior samples. To address this problem, we implemented 3D Convolutional Neural Networks and trained them under different approaches. Also, we tested different values in the number-of-filter parameter to optimize computational resources. Finally, the comparison between the performance using different training approaches shows the best option to improve the suspicious behavior detection on surveillance videos.
机译:可疑行为可能威胁安全,资产,生命或自由。此行为没有特定的模式,它使任务复杂化并定义它。即使对于人类观察者,在监控视频中发现可疑行为是复杂的。文献中提供了解决异常和可疑行为相关问题的一些提案。然而,由于具有高视觉相似性的不同类别,它们通常遭受高的假阳性率。预制行为方法消除了与犯罪委员会相关的信息,以专注于犯罪发生前的可疑行为。由不同类型犯罪的所得样本具有与正常行为样本的高视觉相似性。为了解决这个问题,我们实施了3D卷积神经网络,并在不同的方法下训练了它们。此外,我们在滤波器数参数中测试了不同的值以优化计算资源。最后,使用不同培训方法的性能之间的比较显示了提高监控视频的可疑行为检测的最佳选择。

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