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QA-ReID: Quality-Aware Query-Adaptive Convolution Leveraging Fused Global and Structural Cues for Clothes-Changing ReID

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Unlike conventional person re-identification (ReID), clothes-changing ReID (CC-ReID) presents severe challenges due to substantial appearance variations introduced by clothing changes. In this work, we propose the Quality-Aware Dual-Branch Matching (QA-ReID), which jointly leverages RGB-based features and parsing-based representations to model both global appearance and clothing-invariant structural cues. These heterogeneous features are adaptively fused through a multi-modal attention module. At the matching stage, we further design the Quality-Aware Query Adaptive Convolution (QAConv-QA), which incorporates pixel-level importance weighting and bidirectional consistency constraints to enhance robustness against clothing variations. Extensive experiments demonstrate that QA-ReID achieves state-of-the-art performance on multiple benchmarks, including PRCC, LTCC, and VC-Clothes, and significantly outperforms existing approaches under cross-clothing scenarios.

Yuxiang Wang, Kunming Jiang, Tianxiang Zhang, Ke Tian, Gaozhe Jiang• 2026

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationLTCC General
mAP41.3
82
Person Re-IdentificationLTCC CC
Top-1 Acc42.9
57
Person Re-IdentificationPRCC SC
R-1 Accuracy100
55
Person Re-IdentificationPRCC (CC)
Top-1 Acc64.1
50
Person Re-IdentificationVC-Clothes (CC)
Top-1 Acc86.3
48
Person Re-IdentificationVC-Clothes general (all cams)
Top-1 Acc95.1
30
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