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CodeBind: Decoupled Representation Learning for Multimodal Alignment with Unified Compositional Codebook

About

Multimodal representation alignment is pivotal for large language models and robotics. Traditional methods are often hindered by cross-modal information discrepancies and data scarcity, leading to suboptimal alignment spaces that overlook modality-unique features. We propose CodeBind, a framework that optimizes multimodal representation spaces through a modality-shared-specific codebook design. By incrementally aligning target and bridging modalities, CodeBind bypasses the need for fully paired data. Unlike traditional hard alignment, CodeBind decomposes features into shared components for semantic consistency and specific components for modality-unique details. This design utilizes a compositional vector quantization scheme, where a shared codebook bridges modality gaps and modality-specific codebooks mitigate representation bias by preventing dominant modalities from overshadowing others. Validated across nine modalities (text, image, video, audio, depth, thermal, tactile, 3D point cloud, EEG), CodeBind achieves state-of-the-art performance in multimodal classification and retrieval tasks.

Zeyu Chen, Jie Li, Kai Han• 2026

Related benchmarks

TaskDatasetResultRank
3D Object ClassificationModelNet40
Top-1 Accuracy78.3
89
Audio ClassificationAudioSet
mAP29.2
60
Audio RetrievalAudioCaps
R@115.6
56
Video RetrievalMSR-VTT
R@137.8
34
Audio RetrievalClotho
R@18.5
33
Depth Image ClassificationNYU-D
Top-1 Acc71.1
21
Infrared Image ClassificationLLVIP
Top-1 Accuracy95.5
20
Audio ClassificationVGG-S
Top-1 Accuracy39.5
12
Depth Image ClassificationSUN RGB-D
Top-1 Accuracy54.8
9
Audio RetrievalESC
Recall@178.8
6
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