Performance Comparison for COVID-19 Chest X-ray Images Classification based on Different CNNs

Wessam S. ElAraby, A. Madian
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Abstract

Nowadays, the detection of the disease that is called Coronavirus or COVID-19 is essential for the whole world. Scientific researchers have spent significant efforts on better understanding the characteristics of the virus and possible means to prevent, diagnose and treat COVID-19. Convolutional neural networks (CNNs), have obtained remarkable results in numerous applications. One of these applications is image classification. Chest radiograph (X-ray) images can be requested for early COVID-19 classification of patients. Hence, this paper makes demonstrates different CNN architectures utilizing Chest radiograph database images for COVID-19: detection ( Kaggle’s X-ray chest images). It contains three different classes of images: 1) COVID-19, 2) normal, and 3) viral pneumonia Chest radiograph images. Therefore, three alternative CNN architectures like SqueezeNet, GoogleNet, and ResNet 50 have been realized using Matlab 2019a and numerical simulation has been performed. GoogleNet has achieved good performance based on the accuracy obtained with a value of 97.02% and it saves time-consuming. A performance comparison between different techniques has been carried out and this comparison shows that the detection is accurate enough for the non-uniform structure of the chest radiograph images.
基于不同cnn的COVID-19胸部x线图像分类性能比较
如今,发现冠状病毒或COVID-19疾病对整个世界都至关重要。科学研究人员为更好地了解新冠病毒的特征以及预防、诊断和治疗新冠病毒的可能手段付出了巨大努力。卷积神经网络(cnn)在众多应用中取得了显著的成果。其中一个应用是图像分类。可要求提供胸片(x线)图像,以便对患者进行COVID-19早期分类。因此,本文利用胸片数据库图像演示了不同的CNN架构,用于COVID-19的检测(Kaggle的x射线胸部图像)。它包含三种不同类型的图像:1)COVID-19, 2)正常,3)病毒性肺炎胸片图像。因此,利用Matlab 2019a实现了SqueezeNet、GoogleNet和ResNet 50三种CNN架构,并进行了数值模拟。GoogleNet在获得97.02%的准确率的基础上取得了很好的性能,并且节省了时间。对不同技术的性能进行了比较,结果表明,对于胸片图像的非均匀结构,该检测方法具有足够的准确性。
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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