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Class-Invariant Test-Time Augmentation for Domain Generalization

Abstract

Deep models often suffer significant performance degradation under distribution shifts. Domain generalization (DG) seeks to mitigate this challenge by enabling models to generalize to unseen domains. Most prior approaches rely on multi-domain training or computationally intensive test-time adaptation. In contrast, we propose a complementary strategy: lightweight test-time augmentation. Specifically, we develop a novel Class-Invariant Test-Time Augmentation (CI-TTA) technique. The idea is to generate multiple variants of each input image through elastic and grid deformations that nevertheless belong to the same class as the original input. Their predictions are aggregated through a confidence-guided filtering scheme that remove unreliable outputs, ensuring the final decision relies on consistent and trustworthy cues. Extensive Experiments on PACS and Office-Home datasets demonstrate consistent gains across different DG algorithms and backbones, highlighting the effectiveness and generality of our approach. Code is available at: https://github.com/lzc0907/CI-TTA.

Authors

Lin Z; Wu X; Zhang X

Volume

00

Pagination

pp. 2111-2115

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

May 8, 2026

DOI

10.1109/icassp55912.2026.11462106

Name of conference

ICASSP 2026 - 2026 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
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