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arxiv:2603.00695

STMI: Segmentation-Guided Token Modulation with Cross-Modal Hypergraph Interaction for Multi-Modal Object Re-Identification

Published on Feb 28
· Submitted by
Yuansheng Gao
on Mar 6
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Abstract

A novel multi-modal learning framework for object ReID that enhances foreground representations, extracts compact features through token reallocation, and captures high-order semantic relationships via cross-modal hypergraph interaction.

AI-generated summary

Multi-modal object Re-Identification (ReID) aims to exploit complementary information from different modalities to retrieve specific objects. However, existing methods often rely on hard token filtering or simple fusion strategies, which can lead to the loss of discriminative cues and increased background interference. To address these challenges, we propose STMI, a novel multi-modal learning framework consisting of three key components: (1) Segmentation-Guided Feature Modulation (SFM) module leverages SAM-generated masks to enhance foreground representations and suppress background noise through learnable attention modulation; (2) Semantic Token Reallocation (STR) module employs learnable query tokens and an adaptive reallocation mechanism to extract compact and informative representations without discarding any tokens; (3) Cross-Modal Hypergraph Interaction (CHI) module constructs a unified hypergraph across modalities to capture high-order semantic relationships. Extensive experiments on public benchmarks (i.e., RGBNT201, RGBNT100, and MSVR310) demonstrate the effectiveness and robustness of our proposed STMI framework in multi-modal ReID scenarios.

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STMI tackles RGB/NIR/TIR ReID by injecting SAM masks into attention (SFM), replacing hard token filtering with learnable query-based redistribution (STR), and modeling higher-order cross-modal relations via a unified hypergraph (CHI), achieving strong gains on RGBNT201/100 and MSVR310.

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