Learning to Augment via Implicit Differentiation for Domain Generalization

October 25, 2022 ยท Declared Dead ยท ๐Ÿ› British Machine Vision Conference

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Authors Tingwei Wang, Da Li, Kaiyang Zhou, Tao Xiang, Yi-Zhe Song arXiv ID 2210.14271 Category cs.CV: Computer Vision Citations 2 Venue British Machine Vision Conference Last Checked 3 months ago
Abstract
Machine learning models are intrinsically vulnerable to domain shift between training and testing data, resulting in poor performance in novel domains. Domain generalization (DG) aims to overcome the problem by leveraging multiple source domains to learn a domain-generalizable model. In this paper, we propose a novel augmentation-based DG approach, dubbed AugLearn. Different from existing data augmentation methods, our AugLearn views a data augmentation module as hyper-parameters of a classification model and optimizes the module together with the model via meta-learning. Specifically, at each training step, AugLearn (i) divides source domains into a pseudo source and a pseudo target set, and (ii) trains the augmentation module in such a way that the augmented (synthetic) images can make the model generalize well on the pseudo target set. Moreover, to overcome the expensive second-order gradient computation during meta-learning, we formulate an efficient joint training algorithm, for both the augmentation module and the classification model, based on the implicit function theorem. With the flexibility of augmenting data in both time and frequency spaces, AugLearn shows effectiveness on three standard DG benchmarks, PACS, Office-Home and Digits-DG.
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