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Cross Domain Knowledge Transfer for Unsupervised Vehicle Re-identification

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arxiv 1903.07868 v1 pith:JG5ZCQNG submitted 2019-03-19 cs.CV

Cross Domain Knowledge Transfer for Unsupervised Vehicle Re-identification

classification cs.CV
keywords domainvehiclenetworkadaptationattnetdatasetimagesnamed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Vehicle re-identification (reID) is to identify a target vehicle in different cameras with non-overlapping views. When deploy the well-trained model to a new dataset directly, there is a severe performance drop because of differences among datasets named domain bias. To address this problem, this paper proposes an domain adaptation framework which contains an image-to-image translation network named vehicle transfer generative adversarial network (VTGAN) and an attention-based feature learning network (ATTNet). VTGAN could make images from the source domain (well-labeled) have the style of target domain (unlabeled) and preserve identity information of source domain. To further improve the domain adaptation ability for various backgrounds, ATTNet is proposed to train generated images with the attention structure for vehicle reID. Comprehensive experimental results clearly demonstrate that our method achieves excellent performance on VehicleID dataset.

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