一般体积数据的样条近似

Christian Rössl, Frank Zeilfelder, G. Nürnberger, H. Seidel
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引用次数: 16

摘要

我们提出了一种有效的算法来近似巨大的一般体积数据集,即数据是在任意形状的体积上给出的,由多达数百万个样本组成。该方法基于三次三变量样条,即总次为三次的分段多项式,即体积域的均匀6型四面体分区。类似于最近的二元近似方法(参见[10,15]),三个变量中的样条是由两步方法(参见[40])的结果从离散数据自动确定的,其中不同程度的局部离散最小二乘多项式近似通过使用自然条件(即决定底层样条空间的连续性和光滑性)进行扩展。该方法的主要优点是:不需要对体数据进行四面体分割,只需要求解小的线性系统,自动适应数据的局部变化和分布,可以充分利用计算机辅助几何设计(CAGD)中著名的bernstein - bzazier技术,自动平滑噪声数据。我们用大量合成数据集和一些实际数据的数值例子证实了该方法的有效性,显示了样条近似的高质量,并说明所绘制的等曲面继承了体积近似样条的视觉光滑外观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spline approximation of general volumetric data
We present an efficient algorithm for approximating huge general volumetric data sets, i.e. the data is given over arbitrarily shaped volumes and consists of up to millions of samples. The method is based on cubic trivariate splines, i.e. piecewise polynomials of total degree three defined w.r.t, uniform type-6 tetrahedral partitions of the volumetric domain. Similar as in the recent bivariate approximation approaches (cf. [10, 15]), the splines in three variables are automatically determined from the discrete data as a result of a two-step method (see [40]), where local discrete least squares polynomial approximations of varying degrees are extended by using natural conditions, i.e. the continuity and smoothness properties which determine the underlying spline space. The main advantages of this approach with linear algorithmic complexity are as follows: no tetrahedral partition of the volume data is needed, only small linear systems have to be solved, the local variation and distribution of the data is automatically adapted, Bernstein-Bézier techniques well-known in Computer Aided Geometric Design (CAGD) can be fully exploited, noisy data are automatically smoothed. Our numerical examples with huge data sets for synthetic data as well as some real-world data confirm the efficiency of the methods, show the high quality of the spline approximation, and illustrate that the rendered iso-surfaces inherit a visual smooth appearance from the volume approximating splines.
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