A Real-Time Unmasked Detection Using SSD-MobileNetV2 on Edge Device for the COVID-19 Pandemic

C. Phromsuthirak, Orawan Chunhapran, Maposee Hama, P. Boonrawd, Siranee Nuchitprasitchai
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Abstract

COVID-19 Pandemic affects daily life and the global economy. The COVID-19 virus can be spread by small liquid particles, which can be filtered using a face mask. Wearing masks in public areas is an excellent approach to preventing illness. As a result, mask detection is necessary to stop the spread of the disease before a person enters the facility. Regarding Single Shot Multibox Detector-MobileNetV2 (SSD-MobileNetV2) was used in this research to build tools to detect and monitor unmasked people in the facility or working rooms that consist of many people. In this paper, we showed the experimental performance of SSDMobileNetv2 based on an application that runs on an edge device to detect unmasked people in the room and compromise with very high accuracy of 97% in rooms smaller than 16 square meters, which is sufficient to detect the wearing of masks in public places or various locations.
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在边缘设备上使用SSD-MobileNetV2进行COVID-19大流行的实时解掩检测
COVID-19大流行影响着人们的日常生活和全球经济。COVID-19病毒可以通过小液体颗粒传播,这些小液体颗粒可以用口罩过滤。在公共场所戴口罩是预防疾病的极好方法。因此,为了在人员进入设施之前阻止疾病的传播,有必要进行口罩检测。关于单发多盒探测器- mobilenetv2 (SSD-MobileNetV2)在本研究中用于构建工具,以检测和监控设施或工作室内由许多人组成的未戴面具的人。在本文中,我们展示了基于运行在边缘设备上的应用程序的SSDMobileNetv2的实验性能,该应用程序可以检测房间内未戴口罩的人,并且在小于16平方米的房间中可以达到97%的非常高的准确率,足以检测公共场所或各种地点的佩戴口罩。
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