Domain Adaptive Person Re-Identification via Camera Style Generation and Label Propagation
This work improves person re-identification for surveillance systems by adapting models across domains, though it is incremental as it builds on existing camera style and label propagation techniques.
The paper tackles unsupervised domain adaptation for person re-identification by addressing domain shift and camera variations, achieving state-of-the-art results on benchmark datasets.
Unsupervised domain adaptation in person re-identification resorts to labeled source data to promote the model training on target domain, facing the dilemmas caused by large domain shift and large camera variations. The non-overlapping labels challenge that source domain and target domain have entirely different persons further increases the re-identification difficulty. In this paper, we propose a novel algorithm to narrow such domain gaps. We derive a camera style adaptation framework to learn the style-based mappings between different camera views, from the target domain to the source domain, and then we can transfer the identity-based distribution from the source domain to the target domain on the camera level. To overcome the non-overlapping labels challenge and guide the person re-identification model to narrow the gap further, an efficient and effective soft-labeling method is proposed to mine the intrinsic local structure of the target domain through building the connection between GAN-translated source domain and the target domain. Experiment results conducted on real benchmark datasets indicate that our method gets state-of-the-art results.