Unsupervised Tracklet Person Re-Identification
About
Most existing person re-identification (re-id) methods rely on supervised model learning on per-camera-pair manually labelled pairwise training data. This leads to poor scalability in a practical re-id deployment, due to the lack of exhaustive identity labelling of positive and negative image pairs for every camera-pair. In this work, we present an unsupervised re-id deep learning approach. It is capable of incrementally discovering and exploiting the underlying re-id discriminative information from automatically generated person tracklet data end-to-end. We formulate an Unsupervised Tracklet Association Learning (UTAL) framework. This is by jointly learning within-camera tracklet discrimination and cross-camera tracklet association in order to maximise the discovery of tracklet identity matching both within and across camera views. Extensive experiments demonstrate the superiority of the proposed model over the state-of-the-art unsupervised learning and domain adaptation person re-id methods on eight benchmarking datasets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Person Re-Identification | Market1501 (test) | Rank-1 Accuracy69.2 | 1264 | |
| Person Re-Identification | Duke MTMC-reID (test) | Rank-174.5 | 1018 | |
| Person Re-Identification | MSMT17 (test) | Rank-1 Acc31.4 | 499 | |
| Person Re-Identification | MSMT17 | mAP0.131 | 404 | |
| Person Re-Identification | CUHK03 (test) | Rank-1 Accuracy56.3 | 108 | |
| Person Re-Identification | iLIDS-VID | CMC-135.1 | 80 | |
| Video Person Re-ID | iLIDS-VID | Rank-135.1 | 80 | |
| Person Re-Identification | MARS | Rank-149.9 | 67 | |
| Person Re-Identification | PRID2011 | Rank-154.7 | 66 | |
| Video Person Re-Identification | MARS (test) | Rank-149.9 | 35 |