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DMPT: Decoupled Modality-aware Prompt Tuning for Multi-modal Object Re-identification

15 April 2025
Minghui Lin
Shu Wang
Xiang Wang
Jianhua Tang
Longbin Fu
Zhengrong Zuo
Nong Sang
    VLM
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Abstract

Current multi-modal object re-identification approaches based on large-scale pre-trained backbones (i.e., ViT) have displayed remarkable progress and achieved excellent performance. However, these methods usually adopt the standard full fine-tuning paradigm, which requires the optimization of considerable backbone parameters, causing extensive computational and storage requirements. In this work, we propose an efficient prompt-tuning framework tailored for multi-modal object re-identification, dubbed DMPT, which freezes the main backbone and only optimizes several newly added decoupled modality-aware parameters. Specifically, we explicitly decouple the visual prompts into modality-specific prompts which leverage prior modality knowledge from a powerful text encoder and modality-independent semantic prompts which extract semantic information from multi-modal inputs, such as visible, near-infrared, and thermal-infrared. Built upon the extracted features, we further design a Prompt Inverse Bind (PromptIBind) strategy that employs bind prompts as a medium to connect the semantic prompt tokens of different modalities and facilitates the exchange of complementary multi-modal information, boosting final re-identification results. Experimental results on multiple common benchmarks demonstrate that our DMPT can achieve competitive results to existing state-of-the-art methods while requiring only 6.5% fine-tuning of the backbone parameters.

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@article{lin2025_2504.10985,
  title={ DMPT: Decoupled Modality-aware Prompt Tuning for Multi-modal Object Re-identification },
  author={ Minghui Lin and Shu Wang and Xiang Wang and Jianhua Tang and Longbin Fu and Zhengrong Zuo and Nong Sang },
  journal={arXiv preprint arXiv:2504.10985},
  year={ 2025 }
}
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