Camera Pose Estimation with Unknown Principal Point

Viktor Larsson, Z. Kukelova, Yinqiang Zheng
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引用次数: 25

Abstract

To estimate the 6-DoF extrinsic pose of a pinhole camera with partially unknown intrinsic parameters is a critical sub-problem in structure-from-motion and camera localization. In most of existing camera pose estimation solvers, the principal point is assumed to be in the image center. Unfortunately, this assumption is not always true, especially for asymmetrically cropped images. In this paper, we develop the first exactly minimal solver for the case of unknown principal point and focal length by using four and a half point correspondences (P4.5Pfuv). We also present an extremely fast solver for the case of unknown aspect ratio (P5Pfuva). The new solvers outperform the previous state-of-the-art in terms of stability and speed. Finally, we explore the extremely challenging case of both unknown principal point and radial distortion, and develop the first practical non-minimal solver by using seven point correspondences (P7Pfruv). Experimental results on both simulated data and real Internet images demonstrate the usefulness of our new solvers.
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未知主点的相机姿态估计
在针孔相机内部参数部分未知的情况下,六自由度相机的外部位姿估计是运动构造和相机定位中的关键子问题。在现有的大多数相机姿态估计算法中,假设主点位于图像中心。不幸的是,这个假设并不总是正确的,特别是对于不对称裁剪的图像。在本文中,我们利用四点半对应(P4.5Pfuv)建立了未知主点和焦距情况下的第一个精确最小解算器。我们还提出了一个非常快速的求解未知宽高比(P5Pfuva)的方法。新的解算器在稳定性和速度方面优于以前的最先进的解算器。最后,我们探索了未知主点和径向畸变的极具挑战性的情况,并利用七点对应(P7Pfruv)开发了第一个实用的非最小解算器。在模拟数据和真实网络图像上的实验结果表明了新算法的有效性。
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