An adaptive subdivision method for surface-fitting from sampled data

F. Schmitt, B. Barsky, Wen-Hui Du
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引用次数: 164

Abstract

A method is developed for surface-fitting from sampled data. Surface-fitting is the process of constructing a compact representation to model the surface of an object based on a fairly large number of given data points. In our case, the data is obtained from a real object using an automatic three-dimensional digitizing system. The method is based on an adaptive subdivision approach, a technique previously used for the design and display of free-form curved surface objects. Our approach begins with a rough approximating surface and progressively refines it in successive steps in regions where the data is poorly approximated. The method has been implemented using a parametric piecewise bicubic Bernstein-Bézier surface possessing G1 geometric continuity. An advantage of this approach is that the refinement is essentially local reducing the computational requirements which permits the processing of large databases. Furthermore, the method is simple in concept, yet realizes efficient data compression. Some experimental results are given which show that the representation constructed by this method is faithful to the original database.
一种基于采样数据的曲面拟合自适应细分方法
提出了一种基于采样数据的曲面拟合方法。表面拟合是基于相当多的给定数据点构建一个紧凑的表示来模拟物体表面的过程。在我们的案例中,数据是使用自动三维数字化系统从真实物体获得的。该方法基于自适应细分方法,这是一种以前用于设计和显示自由曲面对象的技术。我们的方法从一个粗略的近似表面开始,并在数据近似不良的区域逐步改进它。采用具有G1几何连续性的参数分段双三次bernstein - bsamizier曲面实现了该方法。这种方法的一个优点是,精化本质上是局部的,减少了允许处理大型数据库的计算需求。该方法概念简单,实现了高效的数据压缩。实验结果表明,该方法对原始数据库的表示是忠实的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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