AIDA-ReID: Adaptive Intermediate Domain Adaptation for Generalizable and Source-Free Person Re-Identification

arXiv cs.AI / 5/4/2026

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Key Points

  • Person re-identification (Re-ID) performance drops in unseen environments due to domain shifts such as lighting, background, camera properties, and population distribution changes.
  • Prior intermediate-domain adaptation methods (e.g., IDM/IDM++) reduce this gap but are constrained by fixed mixing schemes and the assumption of joint source–target access, which weakens their applicability to multi-source and source-free scenarios.
  • The paper introduces AIDA (also called SF-MIDA), which formulates intermediate-domain learning as a dynamically regulated process that adaptively controls feature mixing and regularization based on feedback from model uncertainty and training stability.
  • AIDA uses a multi-source intermediate-domain generator to create diverse intermediate representations and a pseudo-mirror regularization approach to maintain identity consistency under domain perturbations.
  • Experiments reported in domain generalization and source-free settings indicate that AIDA improves effectiveness compared with existing approaches.

Abstract

Person re-identification (Re-ID) aims to match images of the same individual across non-overlapping camera views and remains challenging due to domain shifts caused by variations in illumination, background, camera characteristics, and population distributions. Although supervised models perform well under matched training and testing conditions, their performance degrades significantly when deployed in unseen environments. Existing intermediate domain approaches such as IDM and IDM++ alleviate this gap by constructing bridge feature distributions between domains; however, they rely on fixed mixing strategies and joint source-target access, limiting their applicability to multi-source and source-free settings. To address these limitations, this paper proposes Adaptive Intermediate Domain Adaptation (AIDA), also referred to as Source-Free Multi-Source Intermediate Domain Adaptation (SF-MIDA). The proposed framework treats intermediate-domain learning as a dynamically regulated process, where feature mixing and regularization strength are adaptively controlled using feedback signals derived from model uncertainty and training stability. A multi-source intermediate domain generator synthesizes diverse intermediate representations, while a pseudo-mirror regularization strategy preserves identity consistency under domain perturbations. Extensive experiments across domain generalization and source-free settings demonstrate the effectiveness of the proposed framework.