Adversarial Learning of General Transformations for Data Augmentation
Data augmentation (DA) is fundamental against overfitting in large convolutional neural networks, especially with a limited training dataset. In images, DA is usually based on heuristic transformations, like geometric or color transformations. Instead of using predefined transformations, our work le...
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Zusammenfassung: | Data augmentation (DA) is fundamental against overfitting in large
convolutional neural networks, especially with a limited training dataset. In
images, DA is usually based on heuristic transformations, like geometric or
color transformations. Instead of using predefined transformations, our work
learns data augmentation directly from the training data by learning to
transform images with an encoder-decoder architecture combined with a spatial
transformer network. The transformed images still belong to the same class but
are new, more complex samples for the classifier. Our experiments show that our
approach is better than previous generative data augmentation methods, and
comparable to predefined transformation methods when training an image
classifier. |
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DOI: | 10.48550/arxiv.1909.09801 |