People Re-identification across Non-overlapping Cameras using Group Features
Norimichi Ukita
Yusuke Moriguchi
Norihiro Hagita
Abstract
This paper proposes methods for people
re-identification across non-overlapping cameras. We improve the
robustness of re-identification by using additional group features
acquired from the groups of people detected by each camera. People
are grouped by discriminatively classifying the spatio-temporal
features of their trajectories into those of grouped people and
non-grouped people. Thereafter, three group features are obtained
in each group and utilized with other general features of each
person (e.g., color histogram, transit time between cameras, etc.)
for people re-identification. Our experimental results have
demonstrated improvements in people grouping and people
re-identification when our proposed methods have been applied to a
public dataset.
Manuscript
Citation
- Norimichi Ukita, Yusuke Moriguchi, and Norihiro Hagita,
People Re-identification across Non-overlapping Cameras using
Group Features,
Computer Vision and Image Understanding,
Volume 144, pp.228-236, 2016. (Impact factor 2016 = 2.498)