Learning Data Augmentation with Online Bilevel Optimization for Image Classification
Mounsaveng, Saypraseuth, Laradji, Issam, Ayed, Ismail Ben, Vazquez, David, Pedersoli, Marco
Data augmentation is a key practice in machine learning for improving generalization performance. However, finding the best data augmentation hyperparameters requires domain knowledge or a computationally demanding search. We address this issue by proposing an efficient approach to automatically train a network that learns an effective distribution of transformations to improve its generalization. Using bilevel optimization, we directly optimize the data augmentation parameters using a validation set. This framework can be used as a general solution to learn the optimal data augmentation jointly with an end task model like a classifier. Results show that our joint training method produces an image classification accuracy that is comparable to or better than carefully hand-crafted data augmentation. Yet, it does not need an expensive external validation loop on the data augmentation hyperparameters.
Nov-10-2020
- Country:
- North America > Canada (0.14)
- Genre:
- Research Report > New Finding (0.48)
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- Education (0.46)
- Health & Medicine (0.47)
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