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CAPT: Confusion-Aware Prompt Tuning for Reducing Vision-Language Misalignment

About

Vision-language models like CLIP have achieved remarkable progress in cross-modal representation learning, yet suffer from systematic misclassifications among visually and semantically similar categories. We observe that such confusion patterns are not random but persistently occur between specific category pairs, revealing the model's intrinsic bias and limited fine-grained discriminative ability. To address this, we propose CAPT, a Confusion-Aware Prompt Tuning framework that enables models to learn from their own misalignment. Specifically, we construct a Confusion Bank to explicitly model stable confusion relationships across categories and misclassified samples. On this basis, we introduce a Semantic Confusion Miner (SEM) to capture global inter-class confusion through semantic difference and commonality prompts, and a Sample Confusion Miner (SAM) to retrieve representative misclassified instances from the bank and capture sample-level cues through a Diff-Manner Adapter that integrates global and local contexts. To further unify confusion information across different granularities, a Multi-Granularity Difference Expert (MGDE) module is designed to jointly leverage semantic- and sample-level experts for more robust confusion-aware reasoning. Extensive experiments on 11 benchmark datasets demonstrate that our method significantly reduces confusion-induced errors while enhancing the discriminability and generalization of both base and novel classes, successfully resolving 50.72 percent of confusable sample pairs. Code will be released at https://github.com/greatest-gourmet/CAPT.

Maoyuan Shao, Yutong Gao, Xinyang Huang, Chuang Zhu, Lijuan Sun, Guoshun Nan• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationImageNet A
Top-1 Acc57.73
654
Image ClassificationFlowers102
Accuracy75.41
558
Image ClassificationDTD
Accuracy57.21
485
Image ClassificationFood101
Accuracy88.75
457
Image ClassificationUCF101
Top-1 Acc75.19
455
Image ClassificationSUN397
Accuracy69.43
441
Image ClassificationImageNet
Top-1 Accuracy72.69
366
Image ClassificationStanfordCars
Accuracy74.37
312
Image ClassificationFGVCAircraft
Accuracy27.23
261
Image ClassificationCaltech101
Accuracy94.62
228
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