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Back to the Feature: Learning Robust Camera Localization from Pixels to Pose

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arxiv 2103.09213 v2 pith:Q6K5IO4P submitted 2021-03-16 cs.CV

Back to the Feature: Learning Robust Camera Localization from Pixels to Pose

classification cs.CV
keywords poselearningcamerafeaturemodelpixlocalgorithmsback
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Camera pose estimation in known scenes is a 3D geometry task recently tackled by multiple learning algorithms. Many regress precise geometric quantities, like poses or 3D points, from an input image. This either fails to generalize to new viewpoints or ties the model parameters to a specific scene. In this paper, we go Back to the Feature: we argue that deep networks should focus on learning robust and invariant visual features, while the geometric estimation should be left to principled algorithms. We introduce PixLoc, a scene-agnostic neural network that estimates an accurate 6-DoF pose from an image and a 3D model. Our approach is based on the direct alignment of multiscale deep features, casting camera localization as metric learning. PixLoc learns strong data priors by end-to-end training from pixels to pose and exhibits exceptional generalization to new scenes by separating model parameters and scene geometry. The system can localize in large environments given coarse pose priors but also improve the accuracy of sparse feature matching by jointly refining keypoints and poses with little overhead. The code will be publicly available at https://github.com/cvg/pixloc.

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