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基于卷积神经网络的双向和单向长短期记忆网络用于确定口罩佩戴情况

CNN-based bi-directional and directional long-short term memory network for determination of face mask.

作者信息

Koklu Murat, Cinar Ilkay, Taspinar Yavuz Selim

机构信息

Department of Computer Engineering, Selcuk University, Konya, Turkey.

Doganhisar Vocational School, Selcuk University, Konya, Turkey.

出版信息

Biomed Signal Process Control. 2022 Jan;71:103216. doi: 10.1016/j.bspc.2021.103216. Epub 2021 Oct 9.

Abstract

CONTEXT

The COVID-19 virus, exactly like in numerous other diseases, can be contaminated from person to person by inhalation. In order to prevent the spread of this virus, which led to a pandemic around the world, a series of rules have been set by governments that people must follow. The obligation to use face masks, especially in public spaces, is one of these rules.

OBJECTIVE

The aim of this study is to determine whether people are wearing the face mask correctly by using deep learning methods.

METHODS

A dataset consisting of 2000 images was created. In the dataset, images of a person from three different angles were collected in four classes, which are "masked", "non-masked", "masked but nose open", and "masked but under the chin". Using this data, new models are proposed by transferring the learning through AlexNet and VGG16, which are the Convolutional Neural network architectures. Classification layers of these models were removed and, Long-Short Term Memory and Bi-directional Long-Short Term Memory architectures were added instead.

RESULT AND CONCLUSIONS

Although there are four different classes to determine whether the face masks are used correctly, in the six models proposed, high success rates have been achieved. Among all models, the TrVGG16 + BiLSTM model has achieved the highest classification accuracy with 95.67%.

SIGNIFICANCE

The study has proven that it can take advantage of the proposed models in conjunction with transfer learning to ensure the proper and effective use of the face mask, considering the benefit of society.

摘要

背景

与许多其他疾病一样,新冠病毒可通过飞沫在人与人之间传播。为防止这种导致全球大流行的病毒传播,各国政府制定了一系列人们必须遵守的规定。其中一项规定是在公共场所佩戴口罩。

目的

本研究旨在通过深度学习方法确定人们是否正确佩戴口罩。

方法

创建了一个包含2000张图像的数据集。数据集中,从三个不同角度收集了四类人员的图像,分别是“戴口罩”“未戴口罩”“戴口罩但鼻子外露”和“戴口罩但口罩在下巴以下”。利用这些数据,通过迁移学习,基于卷积神经网络架构AlexNet和VGG16提出了新模型。移除了这些模型的分类层,取而代之添加了长短期记忆和双向长短期记忆架构。

结果与结论

尽管有四类不同情况来判断口罩佩戴是否正确,但在所提出的六个模型中,均取得了较高的成功率。在所有模型中,TrVGG16 + BiLSTM模型的分类准确率最高,达到了95.67%。

意义

考虑到对社会的益处,该研究证明了结合迁移学习利用所提出的模型可以确保口罩的正确有效使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0a18/8527867/9a427e5a1091/gr1_lrg.jpg

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