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Transformer Based Multi-Grained Features for Unsupervised Person Re-Identification
Jiachen Li Menglin Wang Xiaojin Gong

Abstract
Multi-grained features extracted from convolutional neural networks (CNNs) have demonstrated their strong discrimination ability in supervised person re-identification (Re-ID) tasks. Inspired by them, this work investigates the way of extracting multi-grained features from a pure transformer network to address the unsupervised Re-ID problem that is label-free but much more challenging. To this end, we build a dual-branch network architecture based upon a modified Vision Transformer (ViT). The local tokens output in each branch are reshaped and then uniformly partitioned into multiple stripes to generate part-level features, while the global tokens of two branches are averaged to produce a global feature. Further, based upon offline-online associated camera-aware proxies (O2CAP) that is a top-performing unsupervised Re-ID method, we define offline and online contrastive learning losses with respect to both global and part-level features to conduct unsupervised learning. Extensive experiments on three person Re-ID datasets show that the proposed method outperforms state-of-the-art unsupervised methods by a considerable margin, greatly mitigating the gap to supervised counterparts. Code will be available soon at https://github.com/RikoLi/WACV23-workshop-TMGF.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| unsupervised-person-re-identification-on-12 | TMGF | Rank-1: 83.3 Rank-10: 92.1 Rank-5: 90.2 mAP: 58.2 |
| unsupervised-person-re-identification-on-4 | TMGF | MAP: 89.5 Rank-1: 95.5 Rank-10: 98.7 Rank-5: 98.0 |
| unsupervised-person-re-identification-on-5 | TMGF | MAP: 76.8 Rank-1: 86.7 Rank-10: 94.1 Rank-5: 92.9 |
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