TR2026-075

SoREL: Soft-Label Refurbishment with Ensemble Learning for Noisy Long-Tailed Classification


    •  Hsieh, J.-W., Wu, Y.-H., Hsieh, Y.-K., Li, X., Peng, K.-C., Chang, M.-C., "SoREL: Soft-Label Refurbishment with Ensemble Learning for Noisy Long-Tailed Classification", CVPR Findings, June 2026.
      BibTeX TR2026-075 PDF
      • @inproceedings{Hsieh2026jun2,
      • author = {Hsieh, Jun-Wei and Wu, Ying-Hsuan and Hsieh, Yi-Kuan and Li, Xin and Peng, Kuan-Chuan and Chang, Ming-Ching},
      • title = {{SoREL: Soft-Label Refurbishment with Ensemble Learning for Noisy Long-Tailed Classification}},
      • booktitle = {CVPR Findings},
      • year = 2026,
      • month = jun,
      • url = {https://www.merl.com/publications/TR2026-075}
      • }
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  • Research Areas:

    Artificial Intelligence, Computer Vision, Machine Learning

Abstract:

Real-world datasets often suffer from both noisy labels and long-tailed distributions, where rare classes are more prone to annotation errors. Existing methods typically ad- dress these issues separately or rely on unreliable noise pre-screening, leading to biased learning and unstable optimization. We propose Soft-label Refurbishment with Ensemble Learning (SoREL), a two-stage framework that jointly handles label noise and class imbalance. In the first stage, SoREL performs robust soft-label refurbishment via contrastive learning for unbiased representation learning and a Balanced Noise-tolerant Cross-entropy (BANC) loss for stable pre-screening. In the second stage, refurbished soft labels guide multi-expert ensemble learning, where experts specialize in many-, medium-, and few-shot classes. Soft- label-based class statistics further refine loss weighting to better match the true data distribution. Experiments on simulated and real-world noisy long-tailed datasets demonstrate that SoREL achieves 91.80%/67.59% on CIFAR-10/100-LT and 77.74% / 81.40% on Food-101N and Animal-10N, significantly outperforming prior methods.

 

  • Related Publication

  •  Hsieh, J.-W., Wu, Y.-H., Hsieh, Y.-K., Li, X., Peng, K.-C., Chang, M.-C., "SoREL: Soft-Label Refurbishment with Ensemble Learning for Noisy Long-Tailed Classification Supplementary Material", CVPR Findings, June 2026.
    BibTeX TR2026-074 PDF
    • @inproceedings{Hsieh2026jun,
    • author = {Hsieh, Jun-Wei and Wu, Ying-Hsuan and Hsieh, Yi-Kuan and Li, Xin and Peng, Kuan-Chuan and Chang, Ming-Ching},
    • title = {{SoREL: Soft-Label Refurbishment with Ensemble Learning for Noisy Long-Tailed Classification Supplementary Material}},
    • booktitle = {CVPR Findings},
    • year = 2026,
    • month = jun,
    • url = {https://www.merl.com/publications/TR2026-074}
    • }