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Efficient deep neural networks for classification of COVID-19 based on CT images: Virtualization via software defined radio

机译:基于CT图像的Covid-19分类的高效深度神经网络:虚拟化通过软件定义的无线电

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摘要

The novel 2019 coronavirus disease (COVID-19) has infected over 141 million people worldwide since April 20, 2021. More than 200 countries around the world have been affected by the coronavirus pandemic. Screening for COVID-19, we use fast and inexpensive images from computed tomography (CT) scans. In this paper, ResNet-50, VGG-16, convolutional neural network (CNN), convolutional auto-encoder neural network (CAENN), and machine learning (ML) methods are proposed for classifying Chest CT Images of COVID-19. The dataset consists of 1252 CT scans that are positive and 1230 CT scans that are negative for COVID-19 virus. The proposed models have priority over the other models that there is no need of pre-trained networks and data augmentation for them. The classification accuracies of ResNet-50, VGG-16, CNN, and CAENN were obtained 92.24%, 94.07%, 93.84%, and 93.04% respectively. Among ML classifiers, the nearest neighbor (NN) had the highest performance with an accuracy of 94%.
机译:自2019年4月20日以来,新的2019年冠状病毒病(Covid-19)感染了全球超过141万人。世界各地的200多个国家受到冠状病毒大流行影响的影响。 对Covid-19进行筛选,我们使用计算机断层扫描(CT)扫描的快速和廉价的图像。 在本文中,提出了Reset-50,VGG-16,卷积神经网络(CNN),卷积自动编码器神经网络(CANN)和机器学习(ML)方法,用于分类Covid-19的胸部CT图像。 DataSet由1252 CT扫描组成,阳性和1230 CT扫描为Covid-19病毒负数。 所提出的模型优先于其他模型,不需要预先训练的网络和数据增强。 Reset-50,VGG-16,CNN和CNN和CNN和CNY的分类精度分别获得92.24%,94.07%,93.84%和93.04%。 在M1分类器中,最近的邻居(NN)具有最高性能,精度为94%。

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