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Robust Suspicious Action Recognition Approach Using Pose Descriptor

机译:使用姿势描述符的鲁棒可疑行为识别方法

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摘要

In the current era of technological development, human actions can be recorded in public places like airports, shopping malls, and educational institutes, etc., to monitor suspicious activities like terrorism, fighting, theft, and vandalism. Surveillance videos contain adequate visual and motion information for events that occur within a camera's view. Our study focuses on the concept that actions are a sequence of moving body parts. In this paper, a new descriptor is proposed that formulates human poses and tracks the relative motion of human body parts along with the video frames, and extracts the position and orientation of body parts. We used Part Affinity Fields (PAFs) to acquire the associated body parts of the people present in the frame. The architecture jointly learns the body parts and their associations with other body parts in a sequential process, such that a pose can be formulated step by step. We can obtain the complete pose with a limited number of points as it moves along the video and we can conclude with a defined action. Later, these feature points are classified with a Support Vector Machine (SVM). The proposed work was evaluated on the benchmark datasets, namely, UT-interaction, UCF11, CASIA, and HCA datasets. Our proposed scheme was evaluated on the aforementioned datasets, which contained criminal/suspicious actions, such as kick, punch, push, gun shooting, and sword-fighting, and achieved an accuracy of 96.4 on UT-interaction, 99 on UCF11, 98 on CASIA and 88.72 on HCA.
机译:在当今技术发展的时代,可以在机场、商场和教育机构等公共场所记录人类行为,以监控恐怖主义、打架、盗窃和故意破坏等可疑活动。监控视频包含摄像机视野内发生的事件的足够视觉和运动信息。我们的研究侧重于动作是一系列运动的身体部位的概念。本文提出了一种新的描述符,用于制定人体姿势并跟踪人体部位与视频帧的相对运动,并提取身体部位的位置和方向。我们使用部分亲和场 (PAF) 来获取框架中人物的相关身体部位。该建筑在一个连续的过程中共同学习身体部位及其与其他身体部位的关联,从而可以逐步制定姿势。当它沿着视频移动时,我们可以用有限的点数获得完整的姿势,我们可以用一个定义的动作来结束。稍后,使用支持向量机 (SVM) 对这些特征点进行分类。在基准数据集上对拟议的工作进行了评估,即UT相互作用、UCF11、CASIA和HCA数据集。我们提出的方案在上述数据集上进行了评估,其中包含犯罪/可疑行为,如踢、拳、推、枪击和剑术,准确率为96。UT相互作用为4%,UCF11为99%,CASIA为98%,HCA为88.72%。

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