Large-Scale Spatio-Temporal Person Re-identification: Algorithm and
Benchmark
- URL: http://arxiv.org/abs/2105.15076v2
- Date: Thu, 3 Jun 2021 02:29:58 GMT
- Title: Large-Scale Spatio-Temporal Person Re-identification: Algorithm and
Benchmark
- Authors: Xiujun Shu, Xiao Wang, Shiliang Zhang, Xianghao Zhang, Yuanqi Chen, Ge
Li, Qi Tian
- Abstract summary: We contribute a novel Large-scale Spatio-Temporal (LaST) person re-ID dataset, including 10,860 identities with more than 224k images.
LaST presents more challenging and high-diversity reID settings, and significantly larger spatial and temporal ranges.
- Score: 100.77540900932763
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Person re-identification (re-ID) in the scenario with large spatial and
temporal spans has not been fully explored. This is partially because that,
existing benchmark datasets were mainly collected with limited spatial and
temporal ranges, e.g., using videos recorded in a few days by cameras in a
specific region of the campus. Such limited spatial and temporal ranges make it
hard to simulate the difficulties of person re-ID in real scenarios. In this
work, we contribute a novel Large-scale Spatio-Temporal (LaST) person re-ID
dataset, including 10,860 identities with more than 224k images. Compared with
existing datasets, LaST presents more challenging and high-diversity reID
settings, and significantly larger spatial and temporal ranges. For instance,
each person can appear in different cities or countries, and in various time
slots from daytime to night, and in different seasons from spring to winter. To
our best knowledge, LaST is a novel person re-ID dataset with the largest
spatiotemporal ranges. Based on LaST, we verified its challenge by conducting a
comprehensive performance evaluation of 14 re-ID algorithms. We further propose
an easy-to-implement baseline that works well on such challenging re-ID
setting. We also verified that models pre-trained on LaST can generalize well
on existing datasets with short-term and cloth-changing scenarios. We expect
LaST to inspire future works toward more realistic and challenging re-ID tasks.
More information about the dataset is available at
https://github.com/shuxjweb/last.git.
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