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Multi-View Optimization of Local Feature Geometry

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arxiv 2003.08348 v2 pith:NTP64HOW submitted 2020-03-18 cs.CV

Multi-View Optimization of Local Feature Geometry

classification cs.CV
keywords localcamerafeaturegeometrylocalizationfeatureskeypointmethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this work, we address the problem of refining the geometry of local image features from multiple views without known scene or camera geometry. Current approaches to local feature detection are inherently limited in their keypoint localization accuracy because they only operate on a single view. This limitation has a negative impact on downstream tasks such as Structure-from-Motion, where inaccurate keypoints lead to large errors in triangulation and camera localization. Our proposed method naturally complements the traditional feature extraction and matching paradigm. We first estimate local geometric transformations between tentative matches and then optimize the keypoint locations over multiple views jointly according to a non-linear least squares formulation. Throughout a variety of experiments, we show that our method consistently improves the triangulation and camera localization performance for both hand-crafted and learned local features.

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