SRasP: Self-Reorientation Adversarial Style Perturbation for Cross-Domain Few-Shot Learning
- URL: http://arxiv.org/abs/2603.05135v1
- Date: Thu, 05 Mar 2026 13:03:35 GMT
- Title: SRasP: Self-Reorientation Adversarial Style Perturbation for Cross-Domain Few-Shot Learning
- Authors: Wenqian Li, Pengfei Fang, Hui Xue,
- Abstract summary: Cross-Domain Few-Shot Learning aims to transfer knowledge from a seen source domain to unseen target domains.<n>Existing style-based perturbation methods mitigate domain shift but often suffer from instability and convergence to sharp minima.<n>We propose a novel crop-global style perturbation network, termed Self-Reorientation Adversarial underlineStyle underlinePerturbation (SRasP)
- Score: 29.002306547742347
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cross-Domain Few-Shot Learning (CD-FSL) aims to transfer knowledge from a seen source domain to unseen target domains, serving as a key benchmark for evaluating the robustness and transferability of models. Existing style-based perturbation methods mitigate domain shift but often suffer from gradient instability and convergence to sharp minima.To address these limitations, we propose a novel crop-global style perturbation network, termed Self-Reorientation Adversarial \underline{S}tyle \underline{P}erturbation (SRasP). Specifically, SRasP leverages global semantic guidance to identify incoherent crops, followed by reorienting and aggregating the style gradients of these crops with the global style gradients within one image. Furthermore, we propose a novel multi-objective optimization function to maximize visual discrepancy while enforcing semantic consistency among global, crop, and adversarial features. Applying the stabilized perturbations during training encourages convergence toward flatter and more transferable solutions, improving generalization to unseen domains. Extensive experiments are conducted on multiple CD-FSL benchmarks, demonstrating consistent improvements over state-of-the-art methods.
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