新型冠状病毒肺炎校园课堂防范移动应用

Pikulkaew Tangtisanon
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引用次数: 2

摘要

COVID-19大流行是一种以前未在人类中发现的新型冠状病毒。当感染者咳嗽或说话时,这种病毒可主要通过呼吸道分泌物传播给其他人。为了避免这种流行病在人与人之间传播,政府延长了紧急状态政策,这对包括教育机构在内的全球许多商业部门造成了重大损害。许多学校决定让学生在家学习。然而,在诸如化学车间之类的实践课程中,学生必须来到实验室进行实验,这可能会增加感染的风险。为了防止COVID-19在学生和工作人员之间传播,任何进入学校的人都必须进行风险评估,测量体温并始终佩戴口罩。许多COVID-19接触者追踪平台允许用户评估感染风险并通知他们是否与感染者接触过。不幸的是,它们不能有效地与校园教育系统相结合。开发拟议的移动应用程序是为了在学校持续的COVID-19情况下处理现场教育系统的需求。该应用程序包含新冠肺炎自我评估、点名、保持社交距离等三个主要功能。本文主要研究了基于人脸识别和全球定位系统(GPS)的点名功能。在正常情况下,学生只需打开一个应用程序,向智能手机摄像头显示他或她的脸,然后应用程序将检测面部部分,并轻松识别学生的身份。但是,在每个人都必须戴口罩的新常态下,由于几乎一半的脸被隐藏,人脸识别将是一项非常困难的任务。采用卷积神经网络(CNN)对18人不戴口罩和戴口罩的数据集进行CNN模型训练。口罩佩戴包括三种不同类型的口罩:一次性外科口罩(DS)、N95口罩(N95)和普通3D口罩(3D)。之后,将模型导出到所建议的移动应用程序。在真实数据集上的实验结果表明,该模型在非面罩样本中具有较高的准确率。在口罩样本中,3D口罩的准确率最高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COVID-19 Pandemic Prevention Mobile Application for on Campus Classroom
COVID-19 pandemic is a novel coronavirus that has not been found in humans before. This virus can be transmitted to other humans primarily through respiratory secretions when an infected person coughs or talks. To avoid human to human transmission of this pandemic, the government extend the state of emergency policies which cause vital damage for many business sections worldwide including educational institution. Many schools decide to let the students learn at home. However, in practical courses such as a chemical workshop, students must come to the laboratory room to perform experiments which may increase the risk of infection. In order to prevent the spread of COVID-19 between students and staff, anybody entering the school must conduct a risk assessment, measure a body temperature and wear a face mask at all times. Many COVID-19 contact tracing platforms allow users to assess infection risk and notify if they have been exposed to infected persons. Unfortunately, they cannot be used effectively with the on-campus education system. The proposed mobile application was developed to handle the needs of the onsite education system during the ongoing COVID-19 situation in schools. The application contains three main functions which are a COVID-19 self-assessment, a roll-call, and a social distancing function. This paper focused on the roll-call function using face recognition and Global Positioning System (GPS). In a normal situation, the student just opens an application, shows his or her face to a smartphone camera then the application will detect a face part and easily recognize the student's identification. However, in the new normal situation where everyone must wear a mask, it will be a very difficult task to perform face recognition since almost half of the face is hidden. The convolutional neural network (CNN) was applied to train a CNN model using a dataset of 18 peoples with non face mask wearing and face mask wearing. The face mask wearing consisted of three different face mask types: Disposable surgical mask (DS), N95 face respirators (N95) and general 3D mask (3D). After that, the model was exported to the proposed mobile application. Experimental results on a realworld dataset show that the proposed model can be used with a high accuracy rate in non face mask samples. In face mask samples, the 3D mask has the highest accuracy rate.
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