Hybrid Camera Pose Estimation

Federico Camposeco, Andrea Cohen, M. Pollefeys, Torsten Sattler
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引用次数: 49

Abstract

In this paper, we aim to solve the pose estimation problem of calibrated pinhole and generalized cameras w.r.t. a Structure-from-Motion (SfM) model by leveraging both 2D-3D correspondences as well as 2D-2D correspondences. Traditional approaches either focus on the use of 2D-3D matches, known as structure-based pose estimation or solely on 2D-2D matches (structure-less pose estimation). Absolute pose approaches are limited in their performance by the quality of the 3D point triangulations as well as the completeness of the 3D model. Relative pose approaches, on the other hand, while being more accurate, also tend to be far more computationally costly and often return dozens of possible solutions. This work aims to bridge the gap between these two paradigms. We propose a new RANSAC-based approach that automatically chooses the best type of solver to use at each iteration in a data-driven way. The solvers chosen by our RANSAC can range from pure structure-based or structure-less solvers, to any possible combination of hybrid solvers (i.e. using both types of matches) in between. A number of these new hybrid minimal solvers are also presented in this paper. Both synthetic and real data experiments show our approach to be as accurate as structure-less approaches, while staying close to the efficiency of structure-based methods.
混合摄像机姿态估计
在本文中,我们的目标是通过利用2D-3D对应和2D-2D对应来解决校准针孔相机和广义相机的姿态估计问题。传统的方法要么专注于使用2D-3D匹配,称为基于结构的姿态估计,要么只关注2D-2D匹配(无结构姿态估计)。绝对姿态方法的性能受到三维点三角剖分质量和三维模型完整性的限制。另一方面,相对姿态方法虽然更精确,但计算成本也要高得多,而且通常会返回几十个可能的解决方案。这项工作旨在弥合这两种范式之间的差距。我们提出了一种新的基于ransac的方法,该方法以数据驱动的方式自动选择在每次迭代中使用的最佳解算器类型。RANSAC选择的求解器可以是纯基于结构或无结构的求解器,也可以是混合求解器的任何可能组合(即使用两种类型的匹配)。本文还介绍了一些新的混合最小解。合成和实际数据实验表明,我们的方法与无结构方法一样准确,同时保持接近基于结构的方法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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