COVID-19 Classification From X-rays : A Comparative Study

Nassima Dif, A. Arioui, Ikhals Zeblah, S. Benslimane
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引用次数: 0

Abstract

With the arrival of the most recent coronavirus pandemic, it was a must to find solutions to detect this dangerous virus. Analyzing X-ray images was among the exploited techniques to control this disease. However, the doctor's subjectivity in analyzing X-rays was the first obstacle in detecting this virus accurately. Applying new deep learning techniques to x-ray images can be a potential solution to reduce this subjectivity. This paper aims to conduct a comparative study between six different CNN architectures (VGG16, VGG19, Inception, Xception, DenseNet, and ChexNet) for COVID-19 detection from X-rays. The obtained results based on the transfer learning strategy confirm the efficiency of the VGG 16, where its achieved 98.69 % of accuracy on the COVID-19 Radiography Dataset.
从x射线分类COVID-19:一项比较研究
随着最新冠状病毒大流行的到来,必须找到检测这种危险病毒的解决方案。分析x射线图像是控制这种疾病的常用技术之一。然而,医生在分析x射线时的主观性是准确检测这种病毒的第一个障碍。将新的深度学习技术应用于x射线图像可能是减少这种主观性的潜在解决方案。本文旨在对六种不同的CNN架构(VGG16、VGG19、Inception、Xception、DenseNet和ChexNet)进行COVID-19 x射线检测的比较研究。基于迁移学习策略获得的结果证实了VGG 16的有效性,其在COVID-19放射学数据集上的准确率达到了98.69%。
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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