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An automated Residual Exemplar Local Binary Pattern and iterative ReliefF based COVID-19 detection method using chest X-ray image

机译:一种自动化的残余示例局部二进制模式和胸部X射线图像的基于迭代Creieff基于Covid-19检测方法

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摘要

Coronavirus is normally transmitted from animal to person, but nowadays it is transmitted from person to person by changing its form. Covid-19 appeared as a very dangerous virus and unfortunately caused a worldwide pandemic disease. Radiology doctors use X-ray or CT images for the diagnosis of Covid-19. It has become crucial to help diagnose such images using image processing methods. Therefore, a novel intelligent computer vision method to automatically detect the Covid-19 virus was proposed. The proposed automatic Covid-19 detection method consists of preprocessing, feature extraction, and feature selection stages. Image resizing and grayscale conversion are used in the preprocessing phase. The proposed feature generation method is called Residual Exemplar Local Binary Pattern (ResExLBP). In the feature selection phase, a novel iterative ReliefF (IRF) based feature selection is used. Decision tree (DT), linear discriminant (LD), support vector machine (SVM), k nearest neighborhood (kNN), and subspace discriminant (SD) methods are chosen as classifiers in the classification phase. Leave one out cross-validation (LOOCV), 10-fold cross-validation, and holdout validation are used for training and testing. In this work, SVM classifier achieved 100.0% classification accuracy by using 10-fold cross-validation. This result clearly has shown that the perfect classification rate by using X-ray image for Covid-19 detection. The proposed ResExLBP and IRF based method is also cognitive, lightweight, and highly accurate.
机译:冠状病毒通常从动物传播给人,但现在它通过改变其形式从人传播到人。 Covid-19出现了一个非常危险的病毒,不幸的是导致了全球大流行病。放射学医生使用X射线或CT图像进行Covid-19的诊断。使用图像处理方法帮助诊断这些图像是至关重要的。因此,提出了一种自动检测Covid-19病毒的新型智能计算机视觉方法。所提出的自动Covid-19检测方法包括预处理,特征提取和特征选择阶段。预处理阶段使用图像调整大小和灰度转换。所提出的特征生成方法称为残差示例本地二进制模式(RESEXLBP)。在特征选择阶段,使用基于新的迭代Relieff(IRF)的特征选择。决策树(DT),线性判别(LD),支持向量机(SVM),K最近邻域(KNN)和子空间判别(SD)方法被选为分类阶段的分类器。留出一个交叉验证(LOOCV),10倍交叉验证,并且持续验证用于培训和测试。在这项工作中,SVM分类器通过使用10倍交叉验证实现了100.0%的分类精度。该结果清楚地表明,通过使用用于Covid-19检测的X射线图像的完美分类率。所提出的ResexLBP和IRF的方法也是认知,轻质和高度准确的。

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