Equilibrium contrastive learning for imbalanced image classification
Sumin Roh, Harim Kim, Ho Yun Lee, Il Yong Chun

TL;DR
This paper introduces Equilibrium Contrastive Learning (ECL), a novel supervised contrastive learning framework that balances class features, means, and classifiers to improve imbalanced image classification performance.
Contribution
ECL promotes geometric equilibrium in representation space and classifier alignment, addressing limitations of existing prototype-based contrastive learning methods for imbalanced datasets.
Findings
ECL outperforms state-of-the-art methods on long-tailed datasets.
ECL achieves better class feature balance and classifier alignment.
ECL improves generalization in imbalanced image classification.
Abstract
Contrastive learning (CL) is a predominant technique in image classification, but they showed limited performance with an imbalanced dataset. Recently, several supervised CL methods have been proposed to promote an ideal regular simplex geometric configuration in the representation space-characterized by intra-class feature collapse and uniform inter-class mean spacing, especially for imbalanced datasets. In particular, existing prototype-based methods include class prototypes, as additional samples to consider all classes. However, the existing CL methods suffer from two limitations. First, they do not consider the alignment between the class means/prototypes and classifiers, which could lead to poor generalization. Second, existing prototype-based methods treat prototypes as only one additional sample per class, making their influence depend on the number of class instances in a batch…
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