A Fusion Scheme of Texture Features for COVID-19 Detection of CT Scan Images

D. A. Zebari, A. Abdulazeez, D. Zeebaree, Merdin Shamal Salih
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引用次数: 13

Abstract

Coronavirus (COVID-19) is a new contagious disease reasoned by a new virus that is widely spread over the world, this virus never has been identified in humans before. Respiratory disease can be affected by this virus such as flu with several symptoms, for example, fever, headache, cough, and pneumonia. COVID-19 presence in humans can be tested through blood samples or sputum while the result can be obtained in days. Further, biomedical image analysis assists in showing signs of pneumonia in a patient. Therefore, this paper aims to provide a fully automatic COVID-19 identification system by proposing a new fusion scheme of texture features for CT scan images. This paper presents a fusion scheme based on a machine learning system using three significant texture features, namely, Local Binary Pattern (LBP), Fractal Dimension (FD), and Grey Level Co-occurrence Matrices (GLCM). In experimental results, to demonstrate the efficiency of the proposed scheme we have collected 300 CT scan images from a publicly available database. The experimental result shows the performance of LBP, FD, and GLCM obtained an accuracy of 89.87%, 87.84%, and 90.98%, respectively while the proposed scheme yields better results by achieving 96.91% accuracy.
基于纹理特征融合的CT扫描图像COVID-19检测方法
冠状病毒(COVID-19)是由一种在世界范围内广泛传播的新型病毒引起的新型传染病,这种病毒以前从未在人类身上发现过。这种病毒可感染呼吸道疾病,如流感,伴有发烧、头痛、咳嗽和肺炎等症状。可通过血样或痰液检测人体内是否存在COVID-19,结果可在几天内获得。此外,生物医学图像分析有助于显示患者的肺炎迹象。因此,本文旨在通过提出一种新的CT扫描图像纹理特征融合方案,提供一种全自动的COVID-19识别系统。本文提出了一种基于机器学习系统的融合方案,该融合方案使用了三个重要的纹理特征,即局部二值模式(LBP)、分形维数(FD)和灰度共生矩阵(GLCM)。在实验结果中,为了证明该方法的有效性,我们从一个公开的数据库中收集了300张CT扫描图像。实验结果表明,LBP、FD和GLCM的准确率分别为89.87%、87.84%和90.98%,而本文方案的准确率为96.91%,效果更好。
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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