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Disentangled Feature Learning Network for Vehicle Re-Identification

Yan Bai, Yihang Lou, Yongxing Dai, Jun Liu, Ziqian Chen, Ling‐Yu Duan

202036 citationsDOIOpen Access PDF

Abstract

Vehicle Re-Identification (ReID) has attracted lots of research efforts due to its great significance to the public security. In vehicle ReID, we aim to learn features that are powerful in discriminating subtle differences between vehicles which are visually similar, and also robust against different orientations of the same vehicle. However, these two characteristics are hard to be encapsulated into a single feature representation simultaneously with unified supervision. Here we propose a Disentangled Feature Learning Network (DFLNet) to learn orientation specific and common features concurrently, which are discriminative at details and invariant to orientations, respectively. Moreover, to effectively use these two types of features for ReID, we further design a feature metric alignment scheme to ensure the consistency of the metric scales. The experiments show the effectiveness of our method that achieves state-of-the-art performance on three challenging datasets.

Topics & Concepts

Discriminative modelComputer scienceFeature learningArtificial intelligenceMetric (unit)Consistency (knowledge bases)Feature (linguistics)Machine learningRepresentation (politics)Identification (biology)Pattern recognition (psychology)Feature vectorEngineeringBotanyBiologyLawLinguisticsPoliticsPolitical scienceOperations managementPhilosophyVideo Surveillance and Tracking MethodsAdvanced Neural Network ApplicationsIoT and GPS-based Vehicle Safety Systems