GAMA: Geometry-Aware Manifold Alignment via Structured Adversarial Perturbations for Robust Domain Adaptation
Journal:
arXiv
Published Date:
May 21, 2025
Abstract
Domain adaptation remains a challenge when there is significant manifold
discrepancy between source and target domains. Although recent methods leverage
manifold-aware adversarial perturbations to perform data augmentation, they
often neglect precise manifold alignment and systematic exploration of
structured perturbations. To address this, we propose GAMA (Geometry-Aware
Manifold Alignment), a structured framework that achieves explicit manifold
alignment via adversarial perturbation guided by geometric information. GAMA
systematically employs tangent space exploration and manifold-constrained
adversarial optimization, simultaneously enhancing semantic consistency,
robustness to off-manifold deviations, and cross-domain alignment. Theoretical
analysis shows that GAMA tightens the generalization bound via structured
regularization and explicit alignment. Empirical results on DomainNet, VisDA,
and Office-Home demonstrate that GAMA consistently outperforms existing
adversarial and adaptation methods in both unsupervised and few-shot settings,
exhibiting superior robustness, generalization, and manifold alignment
capability.