建立社会距离监测系统,确保公共场所保持社会距离

Prakhar Shukla, Rahul Kundu, A. Arivarasi, G. Alagiri, J. Shiney
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引用次数: 7

摘要

保持社交距离措施对减少新冠病毒传播很重要。为了打破传播链,保持社会距离是一项严格的规范。本文演示了一个系统,该系统可用于监控公共场所,如自动取款机,商场和医院,以防止任何违反社交距离的行为。在该系统的帮助下,可以方便地监测个人是否在监测区域内保持社交距离,并在有任何违反预定义限制的情况时向个人发出警告。所提出的基于深度学习技术的系统可以安装在一定的有限距离内进行覆盖。该算法可以实现在闭路电视摄像机的实时图像上执行任务。仿真模型采用基于OpenCV库的深度学习算法来估计帧中人物之间的距离,并在COCO数据集上训练YOLO模型来识别帧中的人物。系统必须根据安装位置进行配置。通过实现该算法,可以根据距离和设置的阈值报告违规次数。两个实时图像的违规次数分别为1和2。与距离一起显示的是突出违规的红色框。在更多的样本中验证了报告的效率和正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Social Distance Monitoring System to ensure Social Distancing in Public Areas
Social distancing measures are important to reduce Covid spread. In order to break the chain of spread, social distancing is strictly followed as a norm. This paper demonstrates a system which is useful in monitoring public places like ATMs, malls and hospitals for any social distancing violations. With the help of this proposed system, it would be conveniently possible to monitor individuals whether they are maintaining the social distancing in the area under surveillance and also to alert the individuals as and when there is any violations from the predefined limits. The proposed deep learning technology based system can be installed for coverage within a certain limited distance. The algorithm could be implemented on the live images of CCTV cameras to perform the task. The simulated model uses deep learning algorithms with OpenCV library to estimate distance between the people in the frame, and a YOLO model trained on COCO dataset to identify people in the frame. The system has to be configured according to the location it is being installed at. By implementing the algorithm, the number of violations are reported based on the distance and set threshold. Number of violations reported are one and two for two real time images respectively. The red box highlighting the violations are displayed along with distance. Reporting efficiency and correctness were validated for more number of samples.
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