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Point set registration through minimization of the L2 distance between 3D-NDT models

机译:通过最小化3D-NDT模型之间的L2距离进行点集配准

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Point set registration-the task of finding the best fitting alignment between two sets of point samples, is an important problem in mobile robotics. This article proposes a novel registration algorithm, based on the distance between Three-Dimensional Normal Distributions Transforms. 3D-NDT models — a sub-class of Gaussian Mixture Models with uniformly weighted, largely disjoint components, can be quickly computed from range point data. The proposed algorithm constructs 3D-NDT representations of the input point sets and then formulates an objective function based on the L2 distance between the considered models. Analytic first and second order derivatives of the objective function are computed and used in a standard Newton method optimization scheme, to obtain the best-fitting transformation. The proposed algorithm is evaluated and shown to be more accurate and faster, compared to a state of the art implementation of the Iterative Closest Point and 3D-NDT Point-to-Distribution algorithms.
机译:点集配准-在两组点样本之间寻找最佳拟合对齐的任务,是移动机器人技术中的一个重要问题。本文基于三维正态分布变换之间的距离,提出了一种新颖的配准算法。 3D-NDT模型-具有均匀加权,很大程度上不相交的成分的高斯混合模型的子类,可以从测距点数据中快速计算出来。所提出的算法构造输入点集的3D-NDT表示,然后根据所考虑模型之间的L2距离制定目标函数。计算目标函数的解析一阶和二阶导数,并将其用于标准的牛顿法优化方案中,以获得最佳拟合变换。与迭代最接近点和3D-NDT点对分布算法的最新实现方式相比,所提出的算法得到了评估,并且显示出更加准确,更快的效果。

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