Early Detection of Monkeypox Skin Disease Using Patch Based DL Model and Transfer Learning Techniques

Q2 Computer Science
Abbaraju Sai Sathwik, Beebi Naseeba, Jinka Chandra Kiran, Kokkula Lokesh, Venkata Sasi Deepthi Ch, Nagendra Panini Challa
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引用次数: 0

Abstract

In the field of medicine, it is very important to prognosticate diseases early to cure them from their initial stages. Monkeypox is a viral zoonosis with symptoms similar to the smallpox as it spreads widely with the person who is in close contact with the affected. So, it can be diagnosed using various new age computing techniques such as CNN, RESNET, VGG, EfficientNet. In this work, a prediction model is utilized for better classification of Monkeypox. However, the implementation of machine learning in detecting COVID-19 has encouraged scientists to explore its potential for identifying monkeypox. One challenge in using Deep learning (DL) and machine learning (ML) for this purpose is the lack of sufficient data, including images of monkeypox-infected skin. In response, Monkeypox Skin Image Dataset is collected from Kaggle, the largest of its kind till date which includes images of healthy skin as well as monkeypox and some other infected skin diseases. The dataset undergoes through different data augmentation phases which is fed to different DL and ML algorithms for producing better results. Out of all the approaches, VGG19 and Resnet has got the best result with 92% recognition accuracy.
基于贴片的深度学习模型和迁移学习技术的猴痘皮肤病早期检测
在医学领域,疾病的早期预测和早期治疗是非常重要的。猴痘是一种病毒性人畜共患病,其症状与天花相似,因为它在与受感染者密切接触的人中广泛传播。因此,可以使用各种新时代的计算技术,如CNN, RESNET, VGG, EfficientNet来诊断。本研究利用预测模型对猴痘进行分类。然而,机器学习在检测COVID-19中的应用鼓励科学家探索其识别猴痘的潜力。使用深度学习(DL)和机器学习(ML)来实现这一目的的一个挑战是缺乏足够的数据,包括猴痘感染皮肤的图像。为此,从Kaggle收集猴痘皮肤图像数据集,这是迄今为止同类数据集中最大的,其中包括健康皮肤以及猴痘和其他一些感染皮肤疾病的图像。数据集经历了不同的数据增强阶段,这些阶段被馈送到不同的DL和ML算法以产生更好的结果。在所有方法中,VGG19和Resnet的识别准确率最高,达到92%。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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