AttributeNet: Attribute Enhanced Vehicle Re-Identification

7 Feb 2021  ยท  Rodolfo Quispe, Cuiling Lan, Wenjun Zeng, Helio Pedrini ยท

Vehicle Re-Identification (V-ReID) is a critical task that associates the same vehicle across images from different camera viewpoints. Many works explore attribute clues to enhance V-ReID; however, there is usually a lack of effective interaction between the attribute-related modules and final V-ReID objective. In this work, we propose a new method to efficiently explore discriminative information from vehicle attributes (for instance, color and type). We introduce AttributeNet (ANet) that jointly extracts identity-relevant features and attribute features. We enable the interaction by distilling the ReID-helpful attribute feature and adding it into the general ReID feature to increase the discrimination power. Moreover, we propose a constraint, named Amelioration Constraint (AC), which encourages the feature after adding attribute features onto the general ReID feature to be more discriminative than the original general ReID feature. We validate the effectiveness of our framework on three challenging datasets. Experimental results show that our method achieves the state-of-the-art performance.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Vehicle Re-Identification VehicleID Large ANet Rank-1 80.5 # 6
Rank-5 94.6 # 6
Rank1 80.5 # 1
Rank5 94.6 # 1
Vehicle Re-Identification VehicleID Medium ANet Rank-1 82.8 # 6
Rank-5 96.2 # 6
Rank1 82.8 # 1
Rank5 96.2 # 1
Vehicle Re-Identification VehicleID Small ANet Rank-1 87.9 # 7
Rank-5 97.8 # 3
Rank1 87.9 # 1
Rank5 97.8 # 1
Vehicle Re-Identification VeRi-776 ANet mAP 81.2 # 9
Rank-1 96.8 # 7
Rank1 96.8 # 3
Rank5 98.4 # 3
Vehicle Re-Identification VeRi-Wild Large ANet mAP 75.9 # 1
Rank1 92.5 # 1
Rank5 97.2 # 1
Vehicle Re-Identification VeRi-Wild Medium ANet mAP 82.5 # 1
Rank1 95.2 # 1
Rank5 98.3 # 1
Vehicle Re-Identification VeRi-Wild Small ANet mAP 86.9 # 2
Rank1 96.5 # 2
Rank5 99.2 # 1

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