Many computer vision applications require robust and efficient estimation of camera geometry from a minimal number of input data measurements, ie, solving minimal problems in a RANSAC framework. Minimal problems are usually formulated as complex systems of polynomial equations. Many state-of-the-art efficient polynomial solvers are based on the action matrix method that has been automated and highly optimised in recent years. In this paper we explore the theory of sparse resultants for generating minimal solvers and propose a novel approach based on a using an extra polynomial with a special form. We show that for some camera geometry problems our extra polynomial-based method leads to smaller and more stable solvers than the state-of-the-art Gr\"obner basis-based solvers. The proposed method can be fully automated and incorporated into existing tools for automatic generation of efficient polynomial solvers. It provides a competitive alternative to popular Gr\"obner basis-based methods for minimal problems in computer vision. Additionally, we study the conditions under which the minimal solvers generated by the state-of-the-art action matrix-based methods and the proposed extra polynomial resultant-based method, are equivalent. Specifically we consider a step-by-step comparison between the approaches based on the action matrix and the sparse resultant, followed by a set of substitutions, which would lead to equivalent minimal solvers.
翻译:许多计算机视觉应用要求从少量输入数据测量中可靠和高效地估计相机几何,即解决RANSAC框架中的最低限度问题。 最起码的问题通常被设计成复杂的多元方程式系统。 许多最先进的高效多元方程式是以近年来自动化和高度优化的行动矩阵方法为基础的。 在本文中,我们探索了产生最低解决器的稀释结果者理论,并提出了一个基于使用额外多式和特殊形式的多式数据测量的新颖方法。 我们表明,对于一些相机的多式测量问题,我们以多式为基础的方法导致比以Gr\"grobner基础为基础的解决方案系统更小和更稳定的解决器。 拟议的方法可以完全自动化,并纳入现有工具中,以自动生成高效多式多式解算器。 它为生成最起码的基于Gr\"obner基础方法 " 提供了一种竞争的替代方法,用以解决计算机视觉上的最低问题。 此外,我们研究的是,对于某些相机产生的最起码的解决方案,我们基于等式的多式方法, 以及基于我们所建的平式矩阵的结果方法,可以完全自动地将一个基于一个基于等式的平式的平式的平式模型。