AI RESEARCH
Learning from Imperfect Text Guidance: Robust Long-Tail Visual Recognition with High-Noise Label
arXiv CS.LG
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ArXi:2604.23125v1 Announce Type: cross Real-world data often exhibit long-tailed distributions with numerous noisy labels, substantially degrading the performance of deep models. While prior research has made progress in addressing this combined challenge, it overlooks the severe label-image mismatch inherent to high-noise settings, thereby limiting their effectiveness. Given that observed labels, though mismatched with images, still retain category information, we propose employing auxiliary text information from labels to address label-image inconsistencies in long-tailed noisy data.