4.7 Article

Feature-Based Style Randomization for Domain Generalization

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2022.3152615

关键词

Training; Data models; Adaptation models; Feature extraction; Standards; Training data; Task analysis; Domain generalization; data augmentation; style randomization

资金

  1. National Key Research and Development Program of China [2019YFC0118300]
  2. China Postdoctoral Science Foundation Project [2021M690609]
  3. Jiangsu Natural Science Foundation [BK20210224]
  4. CAAI-Huawei MindSpore Project [CAAIXSJLJJ-2021-042A]

向作者/读者索取更多资源

As a recent notable research topic, domain generalization aims to learn a generic model on multiple source domains and generalize it to arbitrary unseen target domains. Previous methods have focused on image-level data augmentation, but we propose a feature-based style randomization module to achieve feature-level augmentation in this paper, which generates random styles by integrating random noise into the original style.
As a recent noticeable topic, domain generalization (DG) aims to first learn a generic model on multiple source domains and then directly generalize to an arbitrary unseen target domain without any additional adaption. In previous DG models, by generating virtual data to supplement observed source domains, the data augmentation based methods have shown its effectiveness. To simulate the possible unseen domains, most of them enrich the diversity of original data via image-level style transformation. However, we argue that the potential styles are hard to be exhaustively illustrated and fully augmented due to the limited referred styles, leading the diversity could not be always guaranteed. Unlike image-level augmentation, we in this paper develop a simple yet effective feature-based style randomization module to achieve feature-level augmentation, which can produce random styles via integrating random noise into the original style. Compared with existing image-level augmentation, our feature-level augmentation favors a more goal-oriented and sample-diverse way. Furthermore, to sufficiently explore the efficacy of the proposed module, we design a novel progressive training strategy to enable all parameters of the network to be fully trained. Extensive experiments on three standard benchmark datasets, i.e., PACS, VLCS and Office-Home, highlight the superiority of our method compared to the state-of-the-art methods.

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