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A Globally Optimal Method for the PnP Problem with MRP Rotation Parameterization

机译:MRP旋转参数化PNP问题的全局最优方法

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The perspective-n-point (PnP) problem is of fundamental importance in computer vision. A global optimality condition for PnP that is independent of a particular rotation parameterization was recently developed by Nakano. This paper puts forward a direct least squares, algebraic PnP solution that extends Nakano's work by combining his optimality condition with the modified Rodrigues parameters (MRPs) for parameterizing rotation. The result is a system of polynomials that is solved using the Gröbner basis approach. An MRP vector has twice the rotational range of the classical Rodrigues (i.e., Cayley) vector used by Nakano to represent rotation. The proposed solution provides strong guarantees that the full rotation singularity associated with MRPs is avoided. Furthermore, detailed experiments provide evidence that our solution attains accuracy that is indistinguishable from Nakano's Cayley-based method with a moderate increase in computational cost.
机译:透视-N点(PNP)问题在计算机愿景中具有基本重要性。 NAKANO最近开发了独立于特定旋转参数化的PNP的全局最优性条件。 本文通过将其最优性条件与修改的rodrigues参数(MRPS)相结合,延长了NAKANO的工作的直接最小二乘,代数PNP解决方案,用于参数化旋转。 结果是使用Gröbner基础方法解决的多项式系统。 MRP向量具有纳卡诺使用的古典罗格里格(即Cayley)载体的旋转范围的两倍,以表示旋转。 所提出的解决方案提供了强保证,避免了与MRP相关的全旋转奇点。 此外,详细实验提供了证据表明我们的解决方案达到了从Nakano的基于Cayley的方法无法区分的准确性,以适度的计算成本增加。

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