Improving the Detection of Mask-Wearing Mistakes by Deep Learning

C. M. Bentaouza
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Abstract

: This study focuses on the detection of wearing mask errors after machine learning by a Multi-Layer Perceptron Mixer (MLP Mixer) applied to protect masks from COVID-19. To combat the spread of the COVID-19 pandemic, facemasks have become an essential accessory, so it's necessary to identify individuals who follow this health protection. In this case, the most successful face-detection method Viola-Jones was used combining different techniques, each in one step. To make decisions, image classification aims to detect the presence of masks in images using mathematical methods. The classy design involves partitioning the parameter space based on representative attributes for each class. For this purpose, we used MLP mixer which is a convolutional neural network, also known as CNNs or ConvNets, they constitute deep learning because it is much better at detecting similarities than by an integrated image-to-image comparison. The classification ratio is satisfactory to achieve maximum accuracy in detecting. However, the learning time for network convergence is prolonged due to changes in parameters.
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通过深度学习改进对戴面具错误的检测
:本研究的重点是通过多层感知器混合器(MLP 混合器)进行机器学习后检测佩戴口罩的错误,并将其应用于保护口罩免受 COVID-19 的侵害。为了应对 COVID-19 的大流行,口罩已成为必不可少的配件,因此有必要识别遵循这一健康保护措施的个人。在这种情况下,使用了最成功的人脸检测方法 Viola-Jones,该方法结合了不同的技术,每种技术一步到位。为了做出决定,图像分类旨在使用数学方法检测图像中是否存在面具。分类设计包括根据每个类别的代表性属性划分参数空间。为此,我们使用了 MLP 混合器,它是一种卷积神经网络,也被称为 CNN 或 ConvNets,它们构成了深度学习,因为它在检测相似性方面比综合图像到图像的比较要好得多。分类率令人满意,可实现最高的检测准确率。不过,由于参数的变化,网络收敛的学习时间会延长。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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