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DGC-Net: Dense Geometric Correspondence Network

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arxiv 1810.08393 v2 pith:CS3Y5VMT submitted 2018-10-19 cs.CV

DGC-Net: Dense Geometric Correspondence Network

classification cs.CV
keywords denseestimationflowopticaltransformationsaccurateapproachescorrespondence
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper addresses the challenge of dense pixel correspondence estimation between two images. This problem is closely related to optical flow estimation task where ConvNets (CNNs) have recently achieved significant progress. While optical flow methods produce very accurate results for the small pixel translation and limited appearance variation scenarios, they hardly deal with the strong geometric transformations that we consider in this work. In this paper, we propose a coarse-to-fine CNN-based framework that can leverage the advantages of optical flow approaches and extend them to the case of large transformations providing dense and subpixel accurate estimates. It is trained on synthetic transformations and demonstrates very good performance to unseen, realistic, data. Further, we apply our method to the problem of relative camera pose estimation and demonstrate that the model outperforms existing dense approaches.

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