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Thor: A Deep Learning Approach for Face Mask Detection to Prevent the COVID-19 Pandemic

机译:Thor:面膜检测的深度学习方法,防止Covid-19流行病

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With the rapid worldwide spread of Coronavirus (COVID-19 and COVID-20), wearing face masks in public becomes a necessity to mitigate the transmission of this or other pandemics. However, with the lack of on-ground automated prevention measures, depending on humans to enforce face mask-wearing policies in universities and other organizational buildings, is a very costly and time-consuming measure. Without addressing this challenge, mitigating highly airborne transmittable diseases will be impractical, and the time to react will continue to increase. Considering the high personnel traffic in buildings and the effectiveness of countermeasures, that is, detecting and offering unmasked personnel with surgical masks, our aim in this paper is to develop automated detection of unmasked personnel in public spaces in order to respond by providing a surgical mask to them to promptly remedy the situation. Our approach consists of three key components. The first component utilizes a deep learning architecture that integrates deep residual learning (ResNet-50) with Feature Pyramid Network (FPN) to detect the existence of human subjects in the videos (or video feed). The second component utilizes Multi-Task Convolutional Neural Networks (MT-CNN) to detect and extract human faces from these videos. For the third component, we construct and train a convolutional neural network classifier to detect masked and unmasked human subjects. Our techniques were implemented in a mobile robot, Thor, and evaluated using a dataset of videos collected by the robot from public spaces of an educational institute in the U.S. Our evaluation results show that Thor is very accurate achieving an F1 score of 87.7% with a recall of 99.2% in a variety of situations, a reasonable accuracy given the challenging dataset and the problem domain.
机译:随着Coronavirus(Covid-19和Covid-20)的快速蔓延,公共场所的佩戴面部面具成为不断减轻这种或其他流行病的传播的必要性。然而,随着缺乏基地自动化预防措施,根据人类在大学和其他组织建筑物中强制执行面部面膜的政策,是一种非常昂贵和耗时的措施。如果没有解决这一挑战,减轻了高度空中可传播疾病将是不切实际的,并且反应的时间将继续增加。考虑到建筑物的高人员交通和对策的有效性,即检测和提供具有外科掩模的未掩蔽人员,我们本文的目的是在公共场所开发自动检测,以便通过提供手术面具进行响应他们迅速纠正这种情况。我们的方法包括三个关键组件。第一组件利用深度学习架构,该架构将深度剩余学习(Reset-50)集成,具有特征金字塔网络(FPN)来检测视频中的人类受试者(或视频馈送)。第二个组件利用多任务卷积神经网络(MT-CNN)来检测和提取来自这些视频的人称。对于第三个组件,我们构建和培训卷积神经网络分类器以检测掩蔽和未掩蔽的人体受试者。我们的技术是在移动机器人,托尔和使用机器人收集的视频的数据库中实施的技术,我们的评估结果表明,Thor非常准确地实现87.7%的F1得分为87.7%召回各种情况下的99.2%,鉴于具有挑战性的数据集和问题域,可合理准确。

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