An Automated System to Limit COVID-19 Using Facial Mask Detection in Smart City Network

Mohammad Marufur Rahman, Md. Motaleb Hossen Manik, Md. Milon Islam, Saifuddin Mahmud, Jong-Hoon Kim
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引用次数: 111

Abstract

COVID-19 pandemic caused by novel coronavirus is continuously spreading until now all over the world. The impact of COVID-19 has been fallen on almost all sectors of development. The healthcare system is going through a crisis. Many precautionary measures have been taken to reduce the spread of this disease where wearing a mask is one of them. In this paper, we propose a system that restrict the growth of COVID-19 by finding out people who are not wearing any facial mask in a smart city network where all the public places are monitored with Closed-Circuit Television (CCTV) cameras. While a person without a mask is detected, the corresponding authority is informed through the city network. A deep learning architecture is trained on a dataset that consists of images of people with and without masks collected from various sources. The trained architecture achieved 98.7% accuracy on distinguishing people with and without a facial mask for previously unseen test data. It is hoped that our study would be a useful tool to reduce the spread of this communicable disease for many countries in the world.
智慧城市网络中基于口罩检测的新型冠状病毒自动控制系统
目前,新型冠状病毒引起的COVID-19大流行在全球持续蔓延。COVID-19对几乎所有发展部门都产生了影响。医疗保健系统正在经历一场危机。为了减少这种疾病的传播,已经采取了许多预防措施,戴口罩就是其中之一。在本文中,我们提出了一种在所有公共场所都有闭路电视监控的智慧城市网络中,通过寻找不戴口罩的人来限制COVID-19增长的系统。一旦发现没有戴口罩的人,就会通过城市网络通知相应的当局。深度学习架构在一个数据集上进行训练,该数据集由从各种来源收集的带面具和不带面具的人的图像组成。经过训练的体系结构在区分有口罩和没有口罩的人方面达到了98.7%的准确率。希望我们的研究能为世界上许多国家减少这种传染病的传播提供有用的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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