Heterogeneous Relational Complement for Vehicle Re-identification
About
The crucial problem in vehicle re-identification is to find the same vehicle identity when reviewing this object from cross-view cameras, which sets a higher demand for learning viewpoint-invariant representations. In this paper, we propose to solve this problem from two aspects: constructing robust feature representations and proposing camera-sensitive evaluations. We first propose a novel Heterogeneous Relational Complement Network (HRCN) by incorporating region-specific features and cross-level features as complements for the original high-level output. Considering the distributional differences and semantic misalignment, we propose graph-based relation modules to embed these heterogeneous features into one unified high-dimensional space. On the other hand, considering the deficiencies of cross-camera evaluations in existing measures (i.e., CMC and AP), we then propose a Cross-camera Generalization Measure (CGM) to improve the evaluations by introducing position-sensitivity and cross-camera generalization penalties. We further construct a new benchmark of existing models with our proposed CGM and experimental results reveal that our proposed HRCN model achieves new state-of-the-art in VeRi-776, VehicleID, and VERI-Wild.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Vehicle Re-identification | VehicleID (Small) | R-187.8 | 61 | |
| Vehicle Re-identification | VehicleID (Large) | R-178.5 | 39 | |
| Vehicle Re-identification | VehicleID (Medium) | Rank-181.7 | 28 | |
| Vehicle Re-identification | VERI-Wild (Small) | mAP85.2 | 23 | |
| Vehicle Re-identification | VERI-Wild (Medium) | mAP80 | 21 | |
| Vehicle Re-identification | VERI-Wild Large | mAP72.2 | 21 | |
| Vehicle Re-identification | VeRi (test) | -- | 8 |