Learning Domain Invariant Representations for Generalizable Person Re-Identification
About
Generalizable person Re-Identification (ReID) has attracted growing attention in recent computer vision community. In this work, we construct a structural causal model among identity labels, identity-specific factors (clothes/shoes color etc), and domain-specific factors (background, viewpoints etc). According to the causal analysis, we propose a novel Domain Invariant Representation Learning for generalizable person Re-Identification (DIR-ReID) framework. Specifically, we first propose to disentangle the identity-specific and domain-specific feature spaces, based on which we propose an effective algorithmic implementation for backdoor adjustment, essentially serving as a causal intervention towards the SCM. Extensive experiments have been conducted, showing that DIR-ReID outperforms state-of-the-art methods on large-scale domain generalization ReID benchmarks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Person Re-Identification | VIPeR | Rank-158.5 | 182 | |
| Person Re-Identification | VIPeR (test) | Top-1 Accuracy58.3 | 113 | |
| Person Re-Identification | i-LIDS (test) | Top-1 Accuracy74.4 | 47 | |
| Person Re-Identification | DukeMTMC-reID Market1501 (test) | Rank-1 Acc68.2 | 45 | |
| Person Re-Identification | GRID (target) | mAP57.6 | 20 | |
| Person Re-Identification | PRID target | mAP77.1 | 20 | |
| Person Re-Identification | Average (PRID, GRID, VIPeR, iLIDs) (target) | mAP71.2 | 20 | |
| Person Re-Identification | PRID P (test) | Rank-171.1 | 13 | |
| Person Re-Identification | GRID G (test) | R147.8 | 12 | |
| Person Re-Identification | i-LIDS (target) | R-179 | 8 |