Efficient & Effective Prioritized Matching for Large-Scale Image-Based Localization

Accurately determining the position and orientation from which an image was taken, i.e., computing the camera pose, is a fundamental step in many Computer Vision applications. The pose can be recovered from 2D-3D matches between 2D image positions and points in a 3D model of the scene. Recent advanc...

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Veröffentlicht in:IEEE transactions on pattern analysis and machine intelligence 2017-09, Vol.39 (9), p.1744-1756
Hauptverfasser: Sattler, Torsten, Leibe, Bastian, Kobbelt, Leif
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container_title IEEE transactions on pattern analysis and machine intelligence
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creator Sattler, Torsten
Leibe, Bastian
Kobbelt, Leif
description Accurately determining the position and orientation from which an image was taken, i.e., computing the camera pose, is a fundamental step in many Computer Vision applications. The pose can be recovered from 2D-3D matches between 2D image positions and points in a 3D model of the scene. Recent advances in Structure-from-Motion allow us to reconstruct large scenes and thus create the need for image-based localization methods that efficiently handle large-scale 3D models while still being effective, i.e., while localizing as many images as possible. This paper presents an approach for large scale image-based localization that is both efficient and effective. At the core of our approach is a novel prioritized matching step that enables us to first consider features more likely to yield 2D-to-3D matches and to terminate the correspondence search as soon as enough matches have been found. Matches initially lost due to quantization are efficiently recovered by integrating 3D-to-2D search. We show how visibility information from the reconstruction process can be used to improve the efficiency of our approach. We evaluate the performance of our method through extensive experiments and demonstrate that it offers the best combination of efficiency and effectiveness among current state-of-the-art approaches for localization.
doi_str_mv 10.1109/TPAMI.2016.2611662
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subjects camera pose estimation
Cameras
Computational modeling
Computer vision
Image reconstruction
Image-based localization
Localization
location recognition
Matching
Measurement
prioritized feature matching
Solid modeling
Three dimensional models
Three-dimensional displays
Two dimensional displays
Two dimensional models
Visibility
Visualization
title Efficient & Effective Prioritized Matching for Large-Scale Image-Based Localization
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