FedBPrompt: Federated Domain Generalization Person Re-Identification via Body Distribution Aware Visual Prompts
arXiv cs.CV / 3/16/2026
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Key Points
- FedBPrompt introduces a federated domain generalization method for person re-identification that uses body distribution aware visual prompts to guide Transformer attention toward pedestrian-centric regions across decentralized clients.
- The Body Distribution Aware Visual Prompts Mechanism (BAPM) combines Holistic Full Body Prompts to suppress background noise and Body Part Alignment Prompts to capture pose- and viewpoint-robust details.
- A Prompt-based Fine-Tuning Strategy (PFTS) freezes the ViT backbone and updates only lightweight prompts to significantly reduce communication overhead while maintaining adaptability.
- Experimental results show that BAPM improves feature discrimination and cross-domain generalization, with PFTS achieving gains in only a few aggregation rounds and easy integration into existing ViT-based FedDG-ReID frameworks, with code available at https://github.com/leavlong/FedBPrompt.
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