3260 papers • 126 benchmarks • 313 datasets
Image Augmentation is a data augmentation method that generates more training data from the existing training samples. Image Augmentation is especially useful in domains where training data is limited or expensive to obtain like in biomedical applications. Source: Improved Image Augmentation for Convolutional Neural Networks by Copyout and CopyPairing ( Image credit: Kornia )
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