Attribute Guidance With Inherent Pseudo-label For Occluded Person Re-identification
By: Rui Zhi, Zhen Yang, Haiyang Zhang
Potential Business Impact:
Find people even when they are partly hidden.
Person re-identification (Re-ID) aims to match person images across different camera views, with occluded Re-ID addressing scenarios where pedestrians are partially visible. While pre-trained vision-language models have shown effectiveness in Re-ID tasks, they face significant challenges in occluded scenarios by focusing on holistic image semantics while neglecting fine-grained attribute information. This limitation becomes particularly evident when dealing with partially occluded pedestrians or when distinguishing between individuals with subtle appearance differences. To address this limitation, we propose Attribute-Guide ReID (AG-ReID), a novel framework that leverages pre-trained models' inherent capabilities to extract fine-grained semantic attributes without additional data or annotations. Our framework operates through a two-stage process: first generating attribute pseudo-labels that capture subtle visual characteristics, then introducing a dual-guidance mechanism that combines holistic and fine-grained attribute information to enhance image feature extraction. Extensive experiments demonstrate that AG-ReID achieves state-of-the-art results on multiple widely-used Re-ID datasets, showing significant improvements in handling occlusions and subtle attribute differences while maintaining competitive performance on standard Re-ID scenarios.
Similar Papers
Person Re-Identification System at Semantic Level based on Pedestrian Attributes Ontology
CV and Pattern Recognition
Finds people in videos using their clothes.
Background Matters Too: A Language-Enhanced Adversarial Framework for Person Re-Identification
CV and Pattern Recognition
Helps computers find people in crowds better.
OmniPerson: Unified Identity-Preserving Pedestrian Generation
CV and Pattern Recognition
Creates realistic people for computer vision training.