Detection of monkeypox disease from skin lesion images using Mobilenetv2 architecture

IF 0.7 Q2 MATHEMATICS
Öznur Özaltin, Özgür Yeni̇ay
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引用次数: 1

Abstract

Monkeypox has recently become an endemic disease that threatens the whole world. The most distinctive feature of this disease is occurring skin lesions. However, in other types of diseases such as chickenpox, measles, and smallpox skin lesions can also be seen. The main aim of this study was to quickly detect monkeypox disease from others through deep learning approaches based on skin images. In this study, MobileNetv2 was used to determine in images whether it was monkeypox or non-monkeypox. To find splitting methods and optimization methods, a comprehensive analysis was performed. The splitting methods included training and testing (70:30 and 80:20) and 10 fold cross validation. The optimization methods as adaptive moment estimation (adam), root mean square propagation (rmsprop), and stochastic gradient descent momentum (sgdm) were used. Then, MobileNetv2 was tasked as a deep feature extractor and features were obtained from the global pooling layer. The Chi-Square feature selection method was used to reduce feature dimensions. Finally, selected features were classified using the Support Vector Machine (SVM) with different kernel functions. In this study, 10 fold cross validation and adam were seen as the best splitting and optimization methods, respectively, with an accuracy of 98.59%. Then, significant features were selected via the Chi-Square method and while classifying 500 features with SVM, an accuracy of 99.69% was observed.
使用Mobilenev2架构从皮肤病变图像中检测猴痘疾病
猴痘最近已成为威胁全世界的地方病。这种疾病最明显的特点是发生皮肤病变。然而,在其他类型的疾病中,如水痘、麻疹和天花,也可以看到皮肤病变。这项研究的主要目的是通过基于皮肤图像的深度学习方法,快速从他人身上检测猴痘疾病。在这项研究中,MobileNetv2用于确定图像中是猴痘还是非猴痘。为了找到拆分方法和优化方法,进行了综合分析。分裂方法包括训练和测试(70:30和80:20)以及10倍交叉验证。采用了自适应矩估计(adam)、均方根传播(rmsprop)和随机梯度下降动量(sgdm)等优化方法。然后,MobileNetv2被指派为深度特征提取器,并从全局池化层获得特征。使用卡方特征选择方法来减少特征尺寸。最后,使用具有不同核函数的支持向量机对所选特征进行分类。在本研究中,10倍交叉验证和adam分别被认为是最佳的分割和优化方法,准确率为98.59%。然后,通过卡方方法选择显著特征,用SVM对500个特征进行分类,准确率达到99.69%。
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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