Multi-Level Factorisation Net for Person Re-Identification
About
Key to effective person re-identification (Re-ID) is modelling discriminative and view-invariant factors of person appearance at both high and low semantic levels. Recently developed deep Re-ID models either learn a holistic single semantic level feature representation and/or require laborious human annotation of these factors as attributes. We propose Multi-Level Factorisation Net (MLFN), a novel network architecture that factorises the visual appearance of a person into latent discriminative factors at multiple semantic levels without manual annotation. MLFN is composed of multiple stacked blocks. Each block contains multiple factor modules to model latent factors at a specific level, and factor selection modules that dynamically select the factor modules to interpret the content of each input image. The outputs of the factor selection modules also provide a compact latent factor descriptor that is complementary to the conventional deeply learned features. MLFN achieves state-of-the-art results on three Re-ID datasets, as well as compelling results on the general object categorisation CIFAR-100 dataset.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Person Re-Identification | Market1501 (test) | Rank-1 Accuracy92.3 | 1264 | |
| Person Re-Identification | Duke MTMC-reID (test) | Rank-181.2 | 1018 | |
| Person Re-Identification | Market 1501 | mAP74.3 | 999 | |
| Person Re-Identification | DukeMTMC-reID | Rank-1 Acc81.2 | 648 | |
| Person Re-Identification | CUHK03 (Detected) | Rank-1 Accuracy52.8 | 219 | |
| Person Re-Identification | CUHK03 | R189.2 | 184 | |
| Person Re-Identification | CUHK03 (Labeled) | Rank-1 Rate54.7 | 180 | |
| Person Re-Identification | Market-1501 1.0 (test) | Rank-190 | 131 | |
| Person Re-Identification | DukeMTMC | R1 Accuracy81 | 120 | |
| Person Re-Identification | Market-1501 single query | Rank-1 Acc90 | 114 |