AIDA-ReID: Adaptive Intermediate Domain Adaptation for Generalizable and Source-Free Person Re-Identification
arXiv cs.AI / 5/4/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
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.
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