CMCC-ReID: Cross-Modality Clothing-Change Person Re-Identification

arXiv cs.CV / 4/6/2026

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Key Points

  • CMCC-ReIDは、長期監視で同時に発生する「モダリティ差(可視・赤外)」と「服装変化」を両方扱う新しい人物再識別タスクとして定義された。
  • 研究のために、可視と赤外の両ドメインで別の衣装条件を含む新ベンチマークSYSU-CMCCが構築され、二重の異質性を反映する。
  • 提案手法PIA(Progressive Identity Alignment Network)は、服装要因を抑えてID要因を抽出するDBDL(Dual-Branch Disentangling Learning)と、埋め込み空間での双方向プロトタイプ学習BPLによりモダリティギャップと服装干渉を段階的に軽減する。
  • SYSU-CMCC上の実験で、PIAがこの新タスクに対する強力なベースラインとなり、既存手法より大きく性能向上することが示された。

Abstract

Person Re-Identification (ReID) faces severe challenges from modality discrepancy and clothing variation in long-term surveillance scenario. While existing studies have made significant progress in either Visible-Infrared ReID (VI-ReID) or Clothing-Change ReID (CC-ReID), real-world surveillance system often face both challenges simultaneously. To address this overlooked yet realistic problem, we define a new task, termed Cross-Modality Clothing-Change Re-Identification (CMCC-ReID), which targets pedestrian matching across variations in both modality and clothing. To advance research in this direction, we construct a new benchmark SYSU-CMCC, where each identity is captured in both visible and infrared domains with distinct outfits, reflecting the dual heterogeneity of long-term surveillance. To tackle CMCC-ReID, we propose a Progressive Identity Alignment Network (PIA) that progressively mitigates the issues of clothing variation and modality discrepancy. Specifically, a Dual-Branch Disentangling Learning (DBDL) module separates identity-related cues from clothing-related factors to achieve clothing-agnostic representation, and a Bi-Directional Prototype Learning (BPL) module performs intra-modality and inter-modality contrast in the embedding space to bridge the modality gap while further suppressing clothing interference. Extensive experiments on the SYSU-CMCC dataset demonstrate that PIA establishes a strong baseline for this new task and significantly outperforms existing methods.