CVMay 13, 2025

Empowering Vision Transformers with Multi-Scale Causal Intervention for Long-Tailed Image Classification

arXiv:2505.08173v13 citationsh-index: 15IJCAI
Originality Incremental advance
AI Analysis

This work addresses the challenge of improving classification accuracy for tail classes in imbalanced datasets, particularly for Vision Transformers, which is an incremental advancement in causal inference for long-tail learning.

The paper tackled the problem of long-tailed image classification with Vision Transformers by proposing TSCNet, a two-stage causal modeling method that uses multi-scale causal interventions to discover fine-grained causal associations, resulting in outperformance over existing methods on various benchmarks.

Causal inference has emerged as a promising approach to mitigate long-tail classification by handling the biases introduced by class imbalance. However, along with the change of advanced backbone models from Convolutional Neural Networks (CNNs) to Visual Transformers (ViT), existing causal models may not achieve an expected performance gain. This paper investigates the influence of existing causal models on CNNs and ViT variants, highlighting that ViT's global feature representation makes it hard for causal methods to model associations between fine-grained features and predictions, which leads to difficulties in classifying tail classes with similar visual appearance. To address these issues, this paper proposes TSCNet, a two-stage causal modeling method to discover fine-grained causal associations through multi-scale causal interventions. Specifically, in the hierarchical causal representation learning stage (HCRL), it decouples the background and objects, applying backdoor interventions at both the patch and feature level to prevent model from using class-irrelevant areas to infer labels which enhances fine-grained causal representation. In the counterfactual logits bias calibration stage (CLBC), it refines the optimization of model's decision boundary by adaptive constructing counterfactual balanced data distribution to remove the spurious associations in the logits caused by data distribution. Extensive experiments conducted on various long-tail benchmarks demonstrate that the proposed TSCNet can eliminate multiple biases introduced by data imbalance, which outperforms existing methods.

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