Attribute-guided Feature Learning Network for Vehicle Re-identification
- URL: http://arxiv.org/abs/2001.03872v1
- Date: Sun, 12 Jan 2020 06:57:10 GMT
- Title: Attribute-guided Feature Learning Network for Vehicle Re-identification
- Authors: Huibing Wang, Jinjia Peng, Dongyan Chen, Guangqi Jiang, Tongtong Zhao,
Xianping Fu
- Abstract summary: Vehicle re-identification (reID) plays an important role in the automatic analysis of the increasing urban surveillance videos.
This paper proposes a novel Attribute-Guided Network (AGNet), which could learn global representation with the abundant attribute features.
- Score: 13.75036137728257
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Vehicle re-identification (reID) plays an important role in the automatic
analysis of the increasing urban surveillance videos, which has become a hot
topic in recent years. However, it poses the critical but challenging problem
that is caused by various viewpoints of vehicles, diversified illuminations and
complicated environments. Till now, most existing vehicle reID approaches focus
on learning metrics or ensemble to derive better representation, which are only
take identity labels of vehicle into consideration. However, the attributes of
vehicle that contain detailed descriptions are beneficial for training reID
model. Hence, this paper proposes a novel Attribute-Guided Network (AGNet),
which could learn global representation with the abundant attribute features in
an end-to-end manner. Specially, an attribute-guided module is proposed in
AGNet to generate the attribute mask which could inversely guide to select
discriminative features for category classification. Besides that, in our
proposed AGNet, an attribute-based label smoothing (ALS) loss is presented to
better train the reID model, which can strength the distinct ability of vehicle
reID model to regularize AGNet model according to the attributes. Comprehensive
experimental results clearly demonstrate that our method achieves excellent
performance on both VehicleID dataset and VeRi-776 dataset.
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