Modern Data Augmentation Techniques for Computer Vision
A bunch of modern data augmentation techniques for computer vision covering cutout, mixup, cutmix and augmix.
data-augmentation cutout mixup cutmix augmix model-robustness wandb article code tutorial research

Here is a quick outline of what you should expect from this report:

  1. Theoretical know-how of some modern data augmentations along with there implementations in TensorFlow 2.x.
  2. Some interesting ablation studies.
  3. Comparative study between these techniques.
  4. Benchmarking of models trained with the augmentations techniques on the CIFAR-10-C dataset.

Don't forget to tag @ayulockin in your comment, otherwise they may not be notified.

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Deep Learning for Computer Vision
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