Using Deep Learning for COVID-19 Control: Implementing a Convolutional Neural Network in a Facemask Detection Application

Caolan Deery, Kevin Meehan
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Abstract

The ongoing COVID-19 pandemic has changed people’s lives in ways that many would not have predicted. In the days, weeks and months since mandatory lockdowns and restrictions came into effect worldwide, people have had to adjust their daily lives in an effort to slow and restrict the spread of the virus -- like regularly sanitising their hands, maintaining social distancing in crowded places, and wearing facemasks. The latter is contentious for some but has been a necessary deterrent in slowing the spread of this virus. There is potential for utilising technology as a supplementary deterrent and monitoring tool to help detect non-compliance of mask wearing. This research investigates the efficacy of AI for such purposes, exploring the applicability of a Convolutional Neural Network (CNN), for predicting if a person in a real time video feed is wearing a facemask. A dataset of over 10,000 images was created to effectively evaluate this research. The CNN developed was tested against the validation dataset to evaluate its performance, the model demonstrated 98.47% accuracy on a varied and balanced dataset.
将深度学习用于COVID-19控制:在面罩检测应用中实现卷积神经网络
正在进行的COVID-19大流行以许多人无法预测的方式改变了人们的生活。在全球范围内实施强制性封锁和限制措施的几天、几周和几个月里,人们不得不调整日常生活,以减缓和限制病毒的传播,比如定期洗手,在拥挤的地方保持社交距离,戴口罩。后者对一些人来说是有争议的,但在减缓这种病毒的传播方面是一种必要的威慑。有可能利用科技作为辅助威慑和监测工具,帮助发现不遵守佩戴口罩的情况。这项研究调查了人工智能在这方面的功效,探索了卷积神经网络(CNN)在预测实时视频中的人是否戴着口罩方面的适用性。为了有效地评估这项研究,创建了一个超过10,000张图像的数据集。CNN开发的模型针对验证数据集进行了测试,以评估其性能,该模型在多样化和平衡的数据集上显示出98.47%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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