Unsupervised Vehicle Re-identification with Progressive Adaptation
- URL: http://arxiv.org/abs/2006.11486v1
- Date: Sat, 20 Jun 2020 03:59:41 GMT
- Title: Unsupervised Vehicle Re-identification with Progressive Adaptation
- Authors: Jinjia Peng, Yang Wang, Huibing Wang, Zhao Zhang, Xianping Fu, Meng
Wang
- Abstract summary: Vehicle re-identification (reID) aims at identifying vehicles across different non-overlapping cameras views.
We propose a novel progressive adaptation learning method for vehicle reID, named PAL, which infers from the abundant data without annotations.
- Score: 26.95027290004128
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Vehicle re-identification (reID) aims at identifying vehicles across
different non-overlapping cameras views. The existing methods heavily relied on
well-labeled datasets for ideal performance, which inevitably causes fateful
drop due to the severe domain bias between the training domain and the
real-world scenes; worse still, these approaches required full annotations,
which is labor-consuming. To tackle these challenges, we propose a novel
progressive adaptation learning method for vehicle reID, named PAL, which
infers from the abundant data without annotations. For PAL, a data adaptation
module is employed for source domain, which generates the images with similar
data distribution to unlabeled target domain as ``pseudo target samples''.
These pseudo samples are combined with the unlabeled samples that are selected
by a dynamic sampling strategy to make training faster. We further proposed a
weighted label smoothing (WLS) loss, which considers the similarity between
samples with different clusters to balance the confidence of pseudo labels.
Comprehensive experimental results validate the advantages of PAL on both
VehicleID and VeRi-776 dataset.
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