Perspective-1-Ellipsoid: Formulation, Analysis and Solutions of the Camera Pose Estimation Problem from One Ellipse-Ellipsoid Correspondence
Vincent Gaudilli\`ere, Gilles Simon, Marie-Odile Berger

TL;DR
This paper introduces a novel ellipsoid-specific framework for camera pose estimation from a single ellipse-ellipsoid correspondence, simplifying the problem to closed-form solutions and a 1DoF problem, enhancing efficiency and specificity.
Contribution
It develops a new theoretical formalism tailored for ellipsoids, enabling simplified and more accurate pose estimation from minimal data.
Findings
Reduces pose estimation to a closed-form solution for position or orientation.
Further simplifies the problem to a single scalar unknown (1DoF).
Provides analytical derivations and practical illustrations.
Abstract
In computer vision, camera pose estimation from correspondences between 3D geometric entities and their projections into the image has been a widely investigated problem. Although most state-of-the-art methods exploit low-level primitives such as points or lines, the emergence of very effective CNN-based object detectors in the recent years has paved the way to the use of higher-level features carrying semantically meaningful information. Pioneering works in that direction have shown that modelling 3D objects by ellipsoids and 2D detections by ellipses offers a convenient manner to link 2D and 3D data. However, the mathematical formalism most often used in the related litterature does not enable to easily distinguish ellipsoids and ellipses from other quadrics and conics, leading to a loss of specificity potentially detrimental in some developments. Moreover, the linearization process…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Vision and Imaging · Advanced Image and Video Retrieval Techniques
