COVID-LiteNet: A lightweight CNN based network for COVID-19 detection using X-ray images

Aditya Yadav
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Abstract

To restrict the virus's transmission in the pandemic and lessen the strain on the healthcare industry, computer-assisted diagnostics for the accurate and speedy diagnosis of coronavirus illness (COVID-19) has become a prerequisite. Compared to other types of imaging and detection, chest X-ray imaging (CXR) provides several advantages. Healthcare practitioners may profit from any technology instrument providing quick and accurate COVID-19 infection detection. COVID-LiteNet is a technique suggested in this paper that combines white balance with Contrast Limited Adaptive Histogram Equalization (CLAHE) and a convolutional neural network (CNN). White balance is employed as an image pre-processing step in this approach, followed by CLAHE, to improve the visibility of CXR images, and CNN is trained using sparse categorical cross-entropy for image classification tasks and gives the smaller parameters file size, i.e., 2.24 MB. The suggested COVID-LiteNet technique produced better results than vanilla CNN with no pre-processing. The proposed approach outperformed several state-of-the-art methods with a binary classification accuracy of 98.44 percent and a multi-class classification accuracy of 97.50 percent. COVID-LiteNet, the suggested technique, outperformed the competition on various performance parameters. COVID-LiteNet may help radiologists discover COVID-19 patients from CXR pictures by providing thorough model interpretations, cutting diagnostic time significantly.
COVID-LiteNet:基于CNN的轻量级网络,用于使用x射线图像检测COVID-19
为了限制病毒在大流行中的传播,减轻医疗行业的压力,准确、快速诊断新冠肺炎的计算机辅助诊断已成为先决条件。与其他类型的成像和检测相比,胸部x射线成像(CXR)具有几个优势。医疗从业者可以从任何能够快速准确检测COVID-19感染的技术仪器中获益。COVID-LiteNet是本文提出的一种将白平衡与对比度有限自适应直方图均衡化(CLAHE)和卷积神经网络(CNN)相结合的技术。该方法使用白平衡作为图像预处理步骤,然后使用CLAHE来提高CXR图像的可见性,并使用稀疏分类交叉熵训练CNN进行图像分类任务,并给出较小的参数文件大小,即2.24 MB。建议的COVID-LiteNet技术比未进行预处理的vanilla CNN效果更好。该方法优于几种最先进的方法,其二元分类准确率为98.44%,多类分类准确率为97.50%。建议的COVID-LiteNet技术在各种性能参数上都优于竞争对手。COVID-LiteNet可以通过提供全面的模型解释,帮助放射科医生从CXR图像中发现COVID-19患者,从而显着缩短诊断时间。
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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