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Verifying global minima for L_2 minimization problems in multiple view geometry

机译:在多视图几何中验证L_2最小化问题的全局最小值

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摘要

We consider the least-squares (L2) minimization problems in multiple view geometry for triangulation, homography, camera resectioning and structure-and-motion with known rotation, or known plane. Although optimal algorithms have been given for these problems under an L-infinity cost function, finding optimal least-squares solutions to these problems is difficult, since the cost functions are not convex, and in the worst case may have multiple minima. Iterative methods can be used to find a good solution, but this may be a local minimum. This paper provides a method for verifying whether a local-minimum solution is globally optimal, by providing a simple and rapid test involving the Hessian of the cost function. The basic idea is that by showing that the cost function is convex in a restricted but large enough neighbourhood, a sufficient condition for global optimality is obtained. The method is tested on numerous problem instances of real data sets. In the vast majority of cases we are able to verify that the solutions are optimal, in particular, for small to medium-scale problems.
机译:我们考虑了多视图几何中的最小二乘(L2)最小化问题,用于三角测量,单应性,相机切除以及具有已知旋转或已知平面的结构和运动。尽管已经在L无限成本函数下针对这些问题给出了最佳算法,但是由于成本函数不是凸的,并且在最坏的情况下可能具有多个最小值,因此难以找到针对这些问题的最优最小二乘解。可以使用迭代方法找到一个好的解决方案,但这可能是局部最小值。本文通过提供一种简单快速的涉及成本函数的Hessian的检验,提供了一种验证局部最小解是否全局最优的方法。基本思想是,通过证明成本函数在受限但足够大的邻域中是凸的,可以获得全局最优的充分条件。在真实数据集的许多问题实例上测试了该方法。在绝大多数情况下,我们能够验证解决方案是否是最佳的,尤其是对于中小型问题。

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