社会距离捕获和警报工具

Mogula Yeshasvi, Veeramachaneni Bind, S. T
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引用次数: 4

摘要

全球范围内新型冠状病毒的爆发使人们开始思考保护自己免受感染的可能性。采取各种预防措施,如保持社交距离,保持手卫生,远离人群密集的地方,避免接触眼、口、鼻。这一流行病也对各种研究人员、数学家、药剂师等提出了挑战,要求他们在这种流行病的情况下找出解决办法。机器学习的概念和算法也在不同的科学家中找到了很好的位置。在所有预防措施中,保持社交距离对拉平新冠肺炎疫情曲线起着至关重要的作用。本文提出了一种有效的社会距离捕获和警报工具,用于检测未保持社会距离的人类。该系统获取图像/视频作为输入,并对其进行处理,以检测图像帧中的感兴趣区域(ROI)和人。然后,计算所有被识别的人之间的成对距离,根据得到的距离值,系统将提醒那些没有保持社会距离的人。系统评估了各种图像输入采集技术,如图像、视频和相机图像/视频,以计算系统的性能。实验结果表明,该系统对图像的识别精度达到99.7%,对视频的召回率达到97%。该系统还可以扩展到人体跟踪、行人检测和车辆跟踪等应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Distance Capturing and Alerting Tool
The Novel Coronavirus outbreak worldwide has made people think about the possibility of protecting themselves from infections. Various precaution measures like social distancing, maintain hand hygiene, stay away from crowded places, refrain touching eyes, mouth, and nose. The pandemic has also challenged various researchers, mathematicians, Pharmacists etc., to dig out the solutions in this pand emic situation. Machine learning concepts and algorithms also find a great place amidst various scientists. Among all the preventive measures, social distancing plays a vital role in flattening the COVID-19 curve. This paper proposes an effective social distancing capturing and alerting tool to detect humans if they are not maintaining the social distance. The system acquires images/videos as input and process it to detect the Region of Interest (ROI) and human in the image frame. Then, the pairwise distance is computed between all the identified people and depending on the distance value obtained the system will alert the people who are not maintaining the social distance. The system is evaluated for various image input acquisition techniques like image, video, and camera image/video to compute the performance of the system. Experimental results shows that the proposed system obtains a better precision of 99.7% for images and 97% recall for videos. The system can also be extended to applications like human tracking, pedestrian detection, and vehicle tracking.
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