Stylized Synthetic Augmentation further improves Corruption Robustness
By: Georg Siedel , Rojan Regmi , Abhirami Anand and more
Potential Business Impact:
Makes computer pictures work even when blurry.
This paper proposes a training data augmentation pipeline that combines synthetic image data with neural style transfer in order to address the vulnerability of deep vision models to common corruptions. We show that although applying style transfer on synthetic images degrades their quality with respect to the common FID metric, these images are surprisingly beneficial for model training. We conduct a systematic empirical analysis of the effects of both augmentations and their key hyperparameters on the performance of image classifiers. Our results demonstrate that stylization and synthetic data complement each other well and can be combined with popular rule-based data augmentation techniques such as TrivialAugment, while not working with others. Our method achieves state-of-the-art corruption robustness on several small-scale image classification benchmarks, reaching 93.54%, 74.9% and 50.86% robust accuracy on CIFAR-10-C, CIFAR-100-C and TinyImageNet-C, respectively
Similar Papers
Data Augmentation Through Random Style Replacement
CV and Pattern Recognition
Makes computer pictures better for learning.
Composite Data Augmentations for Synthetic Image Detection Against Real-World Perturbations
CV and Pattern Recognition
Finds fake pictures online, even if changed.
Are Synthetic Corruptions A Reliable Proxy For Real-World Corruptions?
CV and Pattern Recognition
Tests computer vision with fake weather, not real.