Noise-aware few-shot learning through bi-directional multi-view prompt alignment
arXiv cs.CV / 3/13/2026
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Key Points
- NA-MVP introduces noise-aware few-shot learning through bi-directional multi-view prompt alignment to improve robustness of vision-language models under noisy supervision.
- The approach uses unbalanced optimal transport to achieve fine-grained patch-to-prompt correspondence and suppress unreliable regions.
- It features a bi-directional prompt design that captures complementary clean-oriented and noise-aware cues to emphasize stable semantics.
- An alignment-guided selective refinement strategy uses optimal transport to correct only mislabeled samples, with experiments on synthetic and real-world noisy benchmarks showing state-of-the-art improvements.
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