Resnet-16和Inception-V4架构从x射线图像中识别Covid-19的性能

Aayush Sharma, Ashwini Kodipalli, T. Rao
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摘要

Covid-19已成为全球面临的重大挑战,迫切需要在临床研究、疫苗发现/试验和制药技术方面取得突破。使用机器学习框架和策略识别症状可以为快速控制和评估铺平道路,最终有助于遏制病毒爆发。我们比较了两个卷积神经网络ResNet-16和Inception-v4在x射线图像分类为Covid-19或非Covid-19方面的性能。结果推断,Inception-v4的模型性能约为83%,这是一个比ResNet-16更深的网络
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Performance of Resnet-16 and Inception-V4 Architecture to Identify Covid-19 from X-Ray Images
Covid-19 has become a big challenge across the world and there has been an urgent need for breakthroughs in clinical research, vaccine discoveries/trial and pharmaceutical technologies. Symptom identification with the use of machine learning frameworks and strategies can greatly pave way for rapid control and assessments that eventually can help to contain virus outbreaks. We compare performance of two convolutional neural networks namely ResNet-16 and Inception-v4 for classification of X-ray images as Covid-19 or non-Covid-19. Results inferred the model performance is around 83% with Inception-v4, which is considerably a deeper network than ResNet-16
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