开发一种保持社会距离的自动视觉系统,以治疗大流行

Fatima Hardan, Ahmed R. J. Almusawi
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引用次数: 3

摘要

世界目前正面临一场医疗危机。这一流行病自出现以来已影响到全世界数百万人。这种情况需要紧急解决。大多数国家采用了不同的解决办法来阻止这一流行病的蔓延。世界卫生组织制定了一些人们应该遵守的规则。规则是这样的,戴口罩,隔离感染者,保持社交距离。保持社交距离是应对新冠病毒取得良好效果的最重要的解决方案之一。已经开发了几个使用人工智能和深度学习来跟踪社交距离的系统。本研究提出了一种基于深度学习的系统。该系统除了测量人与人之间的社会距离外,还包括对人的监控和检测。该系统由两部分组成:(1)利用Viola-Jones算法对人脸进行检测。对级联分类器进行了训练。算法中使用的级联分类器与特征描述符一起检测侧脸和戴口罩。因此,训练是检测的主要手段。(2)测量第一部分中出现的人物的矩形中心之间的欧几里得距离。测量个体之间的距离是为了检查他们遵守社交距离的程度。结果表明,该系统可以很好地应用图像跟踪人与人之间的距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing an Automated Vision System for Maintaing Social Distancing to Cure the Pandemic
The world is currently facing a medical crisis. The epidemic has affected millions of people around the world since its appearance. This situation needs an urgent solution. Most countries have used different solutions to stop the spread of the epidemic. The World Health Organization has imposed some rules that people should adhere. The rules are such, wearing masks, quarantining infected people and social distancing. Social distancing is one of the most important solutions that have given good results to confront the emerging virus. Several systems have been developed that use artificial intelligence and deep learning to track social distancing. In this study, a system based on deep learning has been proposed. The system includes monitoring and detecting people besides measuring the social distance between them. The proposed system consists of two parts: (1) detecting the faces of people using the Viola-Jones algorithm. The Cascade classifiers were trained. The Cascade classifiers used in the algorithm with feature descriptors to detect side faces and wear masks. Hence, training is dominant for detection. (2) measurement of the Euclidean distance between the centers of the rectangles of the people who were revealed in the first part. The distance between individuals' is measured to check how well they adhere to social distancing. The results revealed that the proposed system can perform well in applying images to track the distance between people.
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