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Albumentations: fast and flexible image augmentations

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arxiv 1809.06839 v1 pith:ICRBEZBN submitted 2018-09-18 cs.CV

Albumentations: fast and flexible image augmentations

classification cs.CV
keywords imagealbumentationsaugmentationaugmentationsusedcommonlytransformationsavailable
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Data augmentation is a commonly used technique for increasing both the size and the diversity of labeled training sets by leveraging input transformations that preserve output labels. In computer vision domain, image augmentations have become a common implicit regularization technique to combat overfitting in deep convolutional neural networks and are ubiquitously used to improve performance. While most deep learning frameworks implement basic image transformations, the list is typically limited to some variations and combinations of flipping, rotating, scaling, and cropping. Moreover, the image processing speed varies in existing tools for image augmentation. We present Albumentations, a fast and flexible library for image augmentations with many various image transform operations available, that is also an easy-to-use wrapper around other augmentation libraries. We provide examples of image augmentations for different computer vision tasks and show that Albumentations is faster than other commonly used image augmentation tools on the most of commonly used image transformations. The source code for Albumentations is made publicly available online at https://github.com/albu/albumentations

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