A minimal solution to the autocalibration of radial distortion

Z. Kukelova, T. Pajdla
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引用次数: 79

Abstract

Epipolar geometry and relative camera pose computation are examples of tasks which can be formulated as minimal problems and solved from a minimal number of image points. Finding the solution leads to solving systems of algebraic equations. Often, these systems are not trivial and therefore special algorithms have to be designed to achieve numerical robustness and computational efficiency. In this paper we provide a solution to the problem of estimating radial distortion and epipolar geometry from eight correspondences in two images. Unlike previous algorithms, which were able to solve the problem from nine correspondences only, we enforce the determinant of the fundamental matrix be zero. This leads to a system of eight quadratic and one cubic equation in nine variables. We simplify this system by eliminating six of these variables. Then, we solve the system by finding eigenvectors of an action matrix of a suitably chosen polynomial. We show how to construct the action matrix without computing complete Grobner basis, which provides an efficient and robust solver. The quality of the solver is demonstrated on synthetic and real data.
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径向畸变自动标定的最小解
极几何和相对相机姿态计算是可以表述为最小问题并从最小数量的图像点解决的任务的例子。求解导致求解代数方程组。通常,这些系统不是微不足道的,因此必须设计特殊的算法来实现数值鲁棒性和计算效率。本文给出了一种从两幅图像的8个对应点估计径向畸变和极几何的方法。不像以前的算法,只能从9个对应中解决问题,我们强制基本矩阵的行列式为零。这导致了一个由九个变量的八个二次方程和一个三次方程组成的系统。我们通过消去其中的六个变量来简化这个系统。然后,我们通过寻找一个适当选择的多项式的作用矩阵的特征向量来求解系统。我们展示了如何在不计算完全Grobner基的情况下构造动作矩阵,从而提供了一个高效且鲁棒的求解器。通过综合数据和实际数据验证了该求解器的有效性。
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