彩色点云数据的概率基元细化算法

Johan Ekekrantz, Akshaya Thippur, John Folkesson, P. Jensfelt
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引用次数: 2

摘要

在这项工作中,我们提出了概率原语细化(PPR)算法,这是一种在无组织、有噪声的点云中准确确定估计原语(如平面和球体)参数化的内层的迭代方法。原始曲面上的点的测量噪声采用高斯分布建模,非原始曲面上的点的测量噪声采用直方图建模。给定这些模型,可以计算出源自所提出的表面模型的测量的概率。我们的新技术从测量数据建模噪声表面不需要先验给定参数的传感器噪声模型。没有敏感的参数选择是我们方法的一个优点。利用从这种估计中获得的几何信息,算法然后建立一个基于颜色的表面模型,进一步提高分割的准确性。如果迭代使用,PPR算法可以看作是流行的具有自适应随机核函数的均值移位算法的变体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic Primitive Refinement algorithm for colored point cloud data
In this work we present the Probabilistic Primitive Refinement (PPR) algorithm, an iterative method for accurately determining the inliers of an estimated primitive (such as planes and spheres) parametrization in an unorganized, noisy point cloud. The measurement noise of the points belonging to the proposed primitive surface are modelled using a Gaussian distribution and the measurements of extraneous points to the proposed surface are modelled as a histogram. Given these models, the probability that a measurement originated from the proposed surface model can be computed. Our novel technique to model the noisy surface from the measurement data does not require a priori given parameters for the sensor noise model. The absence of sensitive parameters selection is a strength of our method. Using the geometric information obtained from such an estimate the algorithm then builds a color-based model for the surface, further boosting the accuracy of the segmentation. If used iteratively the PPR algorithm can be seen as a variation of the popular mean-shift algorithm with an adaptive stochastic kernel function.
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