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Vision-Based Real-time Human Malicious Behavior Detection

机译:基于视觉的实时人类恶意行为检测

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Human detection and behavior analysis from surveillance videos is an active area of research in computer vision. Authorities and security administrators need a system that can detect human malicious behavior to take immediate necessary actions. In this paper, we propose an approach to detect the anomalous/malicious behavior of humans in the surveillance videos. The proposed approach models the human behavior using human joint motion information from skeleton sequence. We have divided the proposed approach into four sub-modules i.e. human detection and skeleton estimation, human ID assignment, feature extraction and classification. The proposed approach is evaluated on publicly available CASIA dataset in offline mode and accuracy of 90.81% has been achieved. The experimental results indicates that it can be exploited in real-time applications with low computational cost of 18 frames per second.
机译:监控视频的人类检测和行为分析是计算机愿景中的一个活跃的研究领域。 当局和安全管理员需要一个可以检测人类恶意行为的系统,以立即采取必要的行动。 在本文中,我们提出了一种检测监视视频中人类的异常/恶意行为的方法。 所提出的方法使用来自骨架序列的人类关节运动信息来模拟人类行为。 我们将提出的方法分为四个子模块,即人类检测和骨架估计,人身ID分配,特征提取和分类。 在离线模式下,在公开可用的Casia数据集中评估了所提出的方法,实现了90.81%的准确性。 实验结果表明它可以在实时应用中利用,低计算成本为每秒18帧。

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