VILLS -- Video-Image Learning to Learn Semantics for Person Re-Identification
About
Person Re-identification is a research area with significant real world applications. Despite recent progress, existing methods face challenges in robust re-identification in the wild, e.g., by focusing only on a particular modality and on unreliable patterns such as clothing. A generalized method is highly desired, but remains elusive to achieve due to issues such as the trade-off between spatial and temporal resolution and imperfect feature extraction. We propose VILLS (Video-Image Learning to Learn Semantics), a self-supervised method that jointly learns spatial and temporal features from images and videos. VILLS first designs a local semantic extraction module that adaptively extracts semantically consistent and robust spatial features. Then, VILLS designs a unified feature learning and adaptation module to represent image and video modalities in a consistent feature space. By Leveraging self-supervised, large-scale pre-training, VILLS establishes a new State-of-The-Art that significantly outperforms existing image and video-based methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Person Re-Identification | Market 1501 | mAP92.9 | 1136 | |
| Person Re-Identification | PRCC | Rank1 Acc58.4 | 41 | |
| Person Re-Identification | Briar BTS 5 (test) | Rank-1 Accuracy53.1 | 8 | |
| Person Identification | BRIAR (test) | Rank-134.84 | 3 |