Saved in:
Bibliographic Details
Main Authors: Zhu, Ziquan, Jin, Gaojie, Zhu, Hanruo, Lu, Si-Yuan, Zhang, Yunxiao, Fu, Zeyu, Mu, Ronghui, Zhang, Guoqiang, Sun, Zhao, Yuhang, Xia, Shang, Jiaxing, Li, Xiang, Liu, Lu, Huang, Tianjin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.16732
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908894312267776
author Zhu, Ziquan
Jin, Gaojie
Zhu, Hanruo
Lu, Si-Yuan
Zhang, Yunxiao
Fu, Zeyu
Mu, Ronghui
Zhang, Guoqiang
Sun, Zhao
Yuhang, Xia
Shang, Jiaxing
Li, Xiang
Liu, Lu
Huang, Tianjin
author_facet Zhu, Ziquan
Jin, Gaojie
Zhu, Hanruo
Lu, Si-Yuan
Zhang, Yunxiao
Fu, Zeyu
Mu, Ronghui
Zhang, Guoqiang
Sun, Zhao
Yuhang, Xia
Shang, Jiaxing
Li, Xiang
Liu, Lu
Huang, Tianjin
contents Long-tailed image classification remains a long-standing challenge, as real-world data typically follow highly imbalanced distributions where a few head classes dominate and many tail classes contain only limited samples. This imbalance biases feature learning toward head categories and leads to significant degradation on rare classes. Although recent studies have proposed re-sampling, re-weighting, and decoupled learning strategies, the improvement on the most underrepresented classes still remains marginal compared with overall accuracy. In this work, we present a confusion-centric perspective for long-tailed recognition that explicitly focuses on worst-class generalization. We first establish a new theoretical framework of class-specific error analysis, which shows that the worst-class error can be tightly upper-bounded by the spectral norm of the frequency-weighted confusion matrix and a model-dependent complexity term. Guided by this insight, we propose the Confusion-Aware Spectral Regularizer (CAR) that minimizes the spectral norm of the confusion matrix during training to reduce inter-class confusion and enhance tail-class generalization. To enable stable and efficient optimization, CAR integrates a Differentiable Confusion Matrix Surrogate and an EMA-based Confusion Estimator to maintain smooth and low-variance estimates across mini-batches. Extensive experiments across multiple long-tailed benchmarks demonstrates that CAR substantially improves both worst-class accuracy and overall performance. When combined with ConCutMix augmentation, CAR consistently surpasses exisiting state-of-the-art long-tailed learning methods under both the training-from-scratch setting (by 2.37% ~ 4.83%) and the fine-tuning-from-pretrained setting (by 2.42% ~ 4.17%) across ImageNet-LT, CIFAR100-LT, and iNaturalist datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2603_16732
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Confusion-Aware Spectral Regularizer for Long-Tailed Recognition
Zhu, Ziquan
Jin, Gaojie
Zhu, Hanruo
Lu, Si-Yuan
Zhang, Yunxiao
Fu, Zeyu
Mu, Ronghui
Zhang, Guoqiang
Sun, Zhao
Yuhang, Xia
Shang, Jiaxing
Li, Xiang
Liu, Lu
Huang, Tianjin
Computational Engineering, Finance, and Science
Long-tailed image classification remains a long-standing challenge, as real-world data typically follow highly imbalanced distributions where a few head classes dominate and many tail classes contain only limited samples. This imbalance biases feature learning toward head categories and leads to significant degradation on rare classes. Although recent studies have proposed re-sampling, re-weighting, and decoupled learning strategies, the improvement on the most underrepresented classes still remains marginal compared with overall accuracy. In this work, we present a confusion-centric perspective for long-tailed recognition that explicitly focuses on worst-class generalization. We first establish a new theoretical framework of class-specific error analysis, which shows that the worst-class error can be tightly upper-bounded by the spectral norm of the frequency-weighted confusion matrix and a model-dependent complexity term. Guided by this insight, we propose the Confusion-Aware Spectral Regularizer (CAR) that minimizes the spectral norm of the confusion matrix during training to reduce inter-class confusion and enhance tail-class generalization. To enable stable and efficient optimization, CAR integrates a Differentiable Confusion Matrix Surrogate and an EMA-based Confusion Estimator to maintain smooth and low-variance estimates across mini-batches. Extensive experiments across multiple long-tailed benchmarks demonstrates that CAR substantially improves both worst-class accuracy and overall performance. When combined with ConCutMix augmentation, CAR consistently surpasses exisiting state-of-the-art long-tailed learning methods under both the training-from-scratch setting (by 2.37% ~ 4.83%) and the fine-tuning-from-pretrained setting (by 2.42% ~ 4.17%) across ImageNet-LT, CIFAR100-LT, and iNaturalist datasets.
title Confusion-Aware Spectral Regularizer for Long-Tailed Recognition
topic Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2603.16732