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Filtering in the Diffeomorphism Group and the Registration of Point Sets

机译:微分同构群中的过滤和点集的配准

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摘要

The registration of a pair of point sets as well as the estimation of their pointwise correspondences is a challenging and important task in computer vision. In this paper, we present a method to estimate the diffeomorphic deformation, together with the pointwise correspondences, between a pair of point sets. Many of the registration problems are iteratively solved by estimating the correspondence, locally optimizing certain cost functionals over the rigid or similarity or affine transformation group, then estimating the correspondence again, and so on. This type of approach, however, is well-known to be susceptible to suboptimal local solutions. In this paper, we first adopt the perspective of treating the registration as a posterior estimation optimization problem and solve it accordingly via a particle-filtering framework. Second, within such a framework, the diffeomorphic registration is performed to correct the nonlinear deformation of the points. In doing so, we provide a solution less susceptible to local minima. We provide the experimental results, which include challenging medical data sets where the two point sets differ by 180$^{circ}$ rotation as well as local deformations, to highlight the algorithm's capability of robustly finding the more globally optimal solution for the registration task.
机译:在计算机视觉中,一对点集的配准以及它们的逐点对应关系的估计是一项艰巨而重要的任务。在本文中,我们提出了一种方法来估计一对点集之间的微晶变形以及点向对应关系。通过估计对应关系,在刚性或相似性或仿射变换组上局部优化某些成本函数,然后再次估计对应关系,可以迭代地解决许多注册问题。然而,众所周知,这种方法容易受到次优局部解决方案的影响。在本文中,我们首先从将配准作为后验估计优化问题的角度出发,并通过粒子过滤框架对其进行相应的解决。其次,在这样的框架内,执行微晶配准以校正点的非线性变形。通过这样做,我们提供了一种不易受局部最小值影响的解决方案。我们提供了实验结果,其中包括具有挑战性的医学数据集,其中两个点集相差180 $ ^ {circ} $旋转以及局部变形,以突出显示算法为注册任务稳健地找到更全局最优解决方案的能力。

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