High Confidence Attribute Recognition For Vehicle Re-Identification
Xinze Dou, Yang Liu, Kai Lv, Zhang Xiong, Hao Sheng
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:08:51
Vehicle re-identification aims to associate images or videos of the same vehicle collected from different cameras. Many existing methods address the vehicle re-identification problem by explicitly learning distinguishable global features. However, vehicle attributes, i.e., logo category and orientation, play an indispensable role in identifying vehicles. In this paper, we first propose deep models to recognize vehicle attributes. Then, based on these attributes, we adopt a High Confidence Attribute Network (HCANet) to extract weighted global features. A comprehensive evaluation on the VehicleID dataset shows that our approach achieves competitive results.