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Stochastic global optimization for robust point set registration

机译:鲁棒点集配准的随机全局优化

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In this paper, we propose a new algorithm for pairwise rigid point set registration with unknown point correspondences. The main properties of our method are noise robustness, outlier resistance and global optimal alignment. The problem of registering two point clouds is converted to a minimization of a nonlinear cost function. We propose a new cost function based on an inverse distance kernel that significantly reduces the impact of noise and outliers. In order to achieve a global optimal registration without the need of any initial alignment, we develop a new stochastic approach for global minimization. It is an adaptive sampling method which uses a generalized BSP tree and allows for minimizing nonlinear scalar fields over complex shaped search spaces like, e.g., the space of rotations. We introduce a new technique for a hierarchical decomposition of the rotation space in disjoint equally sized parts called spherical boxes. Furthermore, a procedure for uniform point sampling from spherical boxes is presented. Tests on a variety of point sets show that the proposed registration method performs very well on noisy, outlier corrupted and incomplete data. For comparison, we report how two state-of-the-art registration algorithms perform on the same data sets.
机译:在本文中,我们提出了一种用于未知点对应的成对刚性点集配准的新算法。我们方法的主要特性是噪声鲁棒性,抗离群性和全局最优对准。记录两个点云的问题被转换为非线性成本函数的最小化。我们提出了一种基于反距离核的新成本函数,该函数可显着降低噪声和异常值的影响。为了实现全局最佳注册而无需任何初始调整,我们开发了一种用于全局最小化的新的随机方法。它是一种自适应采样方法,它使用广义的BSP树,并允许最小化复杂形状搜索空间(例如旋转空间)上的非线性标量场。我们引入了一种新技术,用于对不相称的大小相等的零件(称为球形盒)中的旋转空间进行层次分解。此外,提出了从球形盒子进行均匀点采样的程序。在各种点集上的测试表明,所提出的配准方法在嘈杂,异常,不完整的数据上表现良好。为了进行比较,我们报告了两种最先进的注册算法如何对同一数据集执行。

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