Real-time Face Mask Detection Using Deep Learning on Embedded Systems

Vidal Wyatt M. Lopez, P. Abu, M. R. Estuar
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引用次数: 2

Abstract

Coronavirus disease (COVID-19) is an infectious disease, which is caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) that was identified in December 2019 in Wuhan, China [1], [2]. It is a pandemic that causes respiratory disorder and is transmitted through sneezing droplets of infected individuals. These droplets can fall on the objects around the effected and enter a healthy individual through contact. Major symptoms of this disease include lethargy, dry cough, followed by fever [3]. The number of cases is surging dramatically, raping developed and undeveloped countries together [3]. According to the World Health Organization (WHO) COVID-19 weekly epidemiological Update for 29th of December there are 79 million infected cases and 1.7 million deaths globally. This pandemic not only affects our health but also affects our livelihood. In the absence of specific treatment or a vaccine, non-pharmaceutical interventions (NPI) form the backbone of the response to the COVID-19 pandemic. These NPI includes physical distancing, regular hand washing, and wearing a face mask. This study aims to help with the monitoring of these NPIs specifically wearing face masks using deep learning. This study implements face mask detection and recognition system that automatically detects and recognizes if a person is wearing a Medically approved face mask, Non-Medically approved face mask, or not wearing a mask at all. This study has determined that MobileNetV1 model has shown the best performance regarding classification (79%) and processing speed up to 3.25 fps.
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基于嵌入式系统的深度学习实时人脸检测
冠状病毒病(COVID-19)是由2019年12月在中国武汉发现的严重急性呼吸综合征冠状病毒2型(SARS-CoV-2)引起的一种传染病[1],[2]。它是一种引起呼吸系统疾病的大流行疾病,通过感染者的打喷嚏飞沫传播。这些飞沫会落在受影响者周围的物体上,并通过接触进入健康的人体内。该病的主要症状为嗜睡、干咳、发热[3]。病例数量急剧上升,发达国家和不发达国家同时遭受强奸[3]。根据世界卫生组织(世卫组织)12月29日的COVID-19每周流行病学更新,全球有7900万例感染病例和170万例死亡。这场大流行不仅影响我们的健康,也影响我们的生计。在缺乏特异性治疗或疫苗的情况下,非药物干预措施(NPI)构成了应对COVID-19大流行的支柱。这些NPI包括保持身体距离、定期洗手和戴口罩。本研究旨在利用深度学习技术帮助监测这些戴口罩的非营利性组织。本研究实现了口罩检测和识别系统,该系统自动检测和识别一个人是否戴着医学认可的口罩,非医学认可的口罩,或者根本没有戴口罩。本研究确定MobileNetV1模型在分类方面表现最佳(79%),处理速度高达3.25 fps。
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