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Main Authors: Zhang, Qi, Chen, Yuxu, Deng, Lei, Shen, Lili
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.17178
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author Zhang, Qi
Chen, Yuxu
Deng, Lei
Shen, Lili
author_facet Zhang, Qi
Chen, Yuxu
Deng, Lei
Shen, Lili
contents Contrastive Language-Image Pretraining (CLIP) has achieved remarkable performance in various multimodal tasks. However, it still struggles with compositional image-text matching, particularly in accurately associating objects with their corresponding attributes, because its inherent global representation often overlooks fine-grained semantics for attribute binding. Existing methods often require additional training or extensive hard negative sampling, yet they frequently show limited generalization to novel compositional concepts and fail to fundamentally address the drawbacks of global representations. In this paper, we propose ABE-CLIP, a novel training-free Attribute Binding Enhancement method designed to strengthen attribute-object binding in CLIP-like models. Specifically, we employ a Semantic Refinement Mechanism to refine token embeddings for both object and attribute phrases in the text, thereby mitigating attribute confusion and improving semantic precision. We further introduce a Local Token-Patch Alignment strategy that computes similarity scores between refined textual tokens and their most relevant image patches. By aggregating localized similarity scores, ABE-CLIP computes the final image-text similarity. Experiments on multiple datasets demonstrate that ABE-CLIP significantly improves attribute-object binding performance, even surpassing methods that require extensive training.
format Preprint
id arxiv_https___arxiv_org_abs_2512_17178
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publishDate 2025
record_format arxiv
spellingShingle ABE-CLIP: Training-Free Attribute Binding Enhancement for Compositional Image-Text Matching
Zhang, Qi
Chen, Yuxu
Deng, Lei
Shen, Lili
Computer Vision and Pattern Recognition
Information Retrieval
Contrastive Language-Image Pretraining (CLIP) has achieved remarkable performance in various multimodal tasks. However, it still struggles with compositional image-text matching, particularly in accurately associating objects with their corresponding attributes, because its inherent global representation often overlooks fine-grained semantics for attribute binding. Existing methods often require additional training or extensive hard negative sampling, yet they frequently show limited generalization to novel compositional concepts and fail to fundamentally address the drawbacks of global representations. In this paper, we propose ABE-CLIP, a novel training-free Attribute Binding Enhancement method designed to strengthen attribute-object binding in CLIP-like models. Specifically, we employ a Semantic Refinement Mechanism to refine token embeddings for both object and attribute phrases in the text, thereby mitigating attribute confusion and improving semantic precision. We further introduce a Local Token-Patch Alignment strategy that computes similarity scores between refined textual tokens and their most relevant image patches. By aggregating localized similarity scores, ABE-CLIP computes the final image-text similarity. Experiments on multiple datasets demonstrate that ABE-CLIP significantly improves attribute-object binding performance, even surpassing methods that require extensive training.
title ABE-CLIP: Training-Free Attribute Binding Enhancement for Compositional Image-Text Matching
topic Computer Vision and Pattern Recognition
Information Retrieval
url https://arxiv.org/abs/2512.17178