Meta Approach to Data Augmentation Optimization

Jan 1, 2022·
Ryuichiro Hataya
Jan Zdenek
Jan Zdenek
,
Kazuki Yoshizoe
,
Hideki Nakayama
· 0 min read
Abstract
Data augmentation policies drastically improve the performance of image recognition tasks, especially when the policies are optimized for the target data and tasks. In this paper, we propose to optimize image recognition models and data augmentation policies simultaneously to improve the performance using gradient descent. Unlike prior methods, our approach avoids using proxy tasks or reducing search space, and can directly improve the validation performance. Our method achieves efficient and scalable training by approximating the gradient of policies by implicit gradient with Neumann series approximation. We demonstrate that our approach can improve the performance of various image classification tasks, including ImageNet classification and fine-grained recognition, without using dataset-specific hyperparameter tuning.
Type
Publication
IEEE Winter Conference on Applications of Computer Vision (WACV 2022)
publications
Jan Zdenek
Authors
Research Scientist
Jan is a research scientist at CyberAgent, where he works on artificial intelligence and computer vision with a focus on image generation and editing. He received his PhD in Information Science and Technology from the University of Tokyo, where his research centered on image generation. Prior to that, he received his Master’s degree in Creative Informatics from the University of Tokyo, and his Bachelor’s degree in Computer and Information Science from the Czech Technical University in Prague. Born and raised in the Czech Republic, he currently works in Japan.