Classification error rates of deep learning models trained with various data augmentation techniques on the CIFAR-10-C dataset. Adapted from Hendrycks et al. ArXiv Preprint 2019;arXiv: 1912.02781 (41). CIFAR = Canadian Institute For Advanced Research

Classification error rates of deep learning models trained with various data augmentation techniques on the CIFAR-10-C dataset. Adapted from Hendrycks et al. ArXiv Preprint 2019;arXiv: 1912.02781 (41). CIFAR = Canadian Institute For Advanced Research

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Medical image analyses have been widely used to differentiate normal and abnormal cases, detect lesions, segment organs, etc. Recently, owing to many breakthroughs in artificial intelligence techniques, medical image analyses based on deep learning have been actively studied. However, sufficient medical data are difficult to obtain, and data imbala...

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