e-Detect:基于卷积神经网络方法的图像处理的非用户掩码检测

R. W. Tri Hartono, Nadya Sarah, Regina Nur Shabrina, Evan Lokajaya
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引用次数: 1

摘要

COVID-19大流行是由冠状病毒引起的疾病传播的情况。防止病毒在人与人之间传播的努力之一是要求每个人都戴口罩,特别是在公共场所。然而,之前有几项类似的研究,如果发现有人没有戴口罩,都没有随访。本研究的目的是制作一种名为e-Detect的检测器,使用卷积神经网络(CNN)方法检测在超市、医院、学校等公共场所不戴口罩(非用户口罩)的访客。如果e-Detect检测到未戴口罩的非用户从公共区域的大门进入,大门将不打开,蜂鸣器将发出声音,并将访客的照片通过电报发送给保安作为通知。只有游客戴上口罩,大门才会开放。采用17种口罩进行实验,准确度为94%,精密度为100%,灵敏度为94.11%,特异度为100%,错误率为5.56%。对e-Detect能力进行了试验,在实验中显示使用任意类型掩模的探测距离为175厘米。所有通过安装了e-Detect的大门进入公共区域的游客,可以确保游客的脸不会超过175厘米的距离,从而确保所有游客都能得到很好的监督。基于这些数据,可以说e-Detect作为防止COVID-19传播的努力是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
e-Detect: Non-User Mask Detection Based on Image Processing Using Convolutional Neural Network Method
The COVID-19 pandemic is a situation that spreads the disease caused by the corona virus. One of the efforts to prevent the spread of the virus from one person to another is by requiring everyone to wear a face mask, especially for those in public areas. There have been several similar previous studies, however, none of them accompanied by follow-up, if someone is found without a face mask. The purpose of this research is to make a detector called e-Detect to detect visitors in public areas such as supermarkets, hospitals, schools and other similar places that without wearing a face mask (non-user face mask) uses the Convolutional Neural Network (CNN) method. If e-Detect detects non-user face mask who will enter through the gate of a public area without wearing face mask, the gate will not open, the buzzer will sound, and the visitor's photo will be sent to the security guard via telegram as a notification. The gate is only open when visitors wear face masks. Experiments have been carried out using 17 types of masks with percentages of: accuracy 94%, precision 100%, sensitivity 94.11%, specificity 100%, and error rate is 5.56%. A trial on e-Detect ability, show in the experiment range detection distance using any type of mask, which is 175 centimeters. All visitors who come to public areas through the gate that has been installed e-Detect can be ensured that the visitor's face will not be more than 175 cm apart, thus all visitors can be ensured to be well supervised. Based on this data, it can be said that e-Detect is feasible to be produced and used as an effort to prevent the spread of COVID-19.
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