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Beyond Grobner Bases: Basis Selection for Minimal Solvers

机译:超越Grobner基础:最小求解器的基础选择

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Many computer vision applications require robust estimation of the underlying geometry, in terms of camera motion and 3D structure of the scene. These robust methods often rely on running minimal solvers in a RANSAC framework. In this paper we show how we can make polynomial solvers based on the action matrix method faster, by careful selection of the monomial bases. These monomial bases have traditionally been based on a Grobner basis for the polynomial ideal. Here we describe how we can enumerate all such bases in an efficient way. We also show that going beyond Grobner bases leads to more efficient solvers in many cases. We present a novel basis sampling scheme that we evaluate on a number of problems.
机译:许多计算机视觉应用程序需要根据摄像机运动和场景的3D结构对底层几何进行可靠的估计。这些健壮的方法通常依赖于在RANSAC框架中运行最少的求解器。在本文中,我们展示了如何通过谨慎选择单项式基数,使基于动作矩阵方法的多项式求解器更快。这些多项式基数传统上是基于Grobner基来实现多项式理想的。在这里,我们描述了如何有效地枚举所有此类基础。我们还表明,在许多情况下,超越Grobner基础可导致更高效的求解器。我们提出了一种新颖的基础抽样方案,我们对许多问题进行了评估。

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