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A Dual-Path Model With Adaptive Attention For Vehicle Re-Identification

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In recent years, attention models have been extensively used for person and vehicle re-identification. Most re-identification methods are designed to focus attention on key-point locations. However, depending on the orientation, the contribution of each key-point varies. In this paper, we present a novel dual-path adaptive attention model for vehicle re-identification (AAVER). The global appearance path captures macroscopic vehicle features while the orientation conditioned part appearance path learns to capture localized discriminative features by focusing attention on the most informative key-points. Through extensive experimentation, we show that the proposed AAVER method is able to accurately re-identify vehicles in unconstrained scenarios, yielding state of the art results on the challenging dataset VeRi-776. As a byproduct, the proposed system is also able to accurately predict vehicle key-points and shows an improvement of more than 7% over state of the art. The code for key-point estimation model is available at https://github.com/Pirazh/Vehicle_Key_Point_Orientation_Estimation.

Pirazh Khorramshahi, Amit Kumar, Neehar Peri, Sai Saketh Rambhatla, Jun-Cheng Chen, Rama Chellappa• 2019

Related benchmarks

TaskDatasetResultRank
Vehicle Re-identificationVeRi-776 (test)
Rank-188.97
232
Vehicle Re-identificationVehicleID 800 (test)
Rank-1 Acc74.69
69
Vehicle Re-identificationVehicleID 1600 (test)
Rank-1 Score68.62
69
Vehicle Re-identificationVehicleID 2400 (test)
Rank-163.54
63
Vehicle Re-identificationVehicleID (Small)
R-174.7
61
Vehicle Re-identificationVehicleID (Large)
R-163.5
39
Vehicle Re-identificationVehicleID (Medium)
Rank-168.6
28
Vehicle Re-identificationVeRi-Wild (test 3000)
R1 Accuracy75.8
25
Vehicle Re-identificationVeRi-Wild (test5000)
Rank-1 Accuracy68.24
24
Vehicle Re-identificationVeRi-Wild (Test10000)
R1 Accuracy58.69
24
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