Implementing data-dependent triangulations with higher order Delaunay triangulations

Natalia Rodríguez, Rodrigo I. Silveira
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引用次数: 7

Abstract

The Delaunay triangulation is the standard choice for building triangulated irregular networks (TINs) to represent terrain surfaces. However, the Delaunay triangulation is based only on the 2D coordinates of the data points, ignoring their elevation. It has long been recognized that sometimes it may be beneficial to use other, non-Delaunay, criteria to build TINs. Data-dependent triangulations were introduced decades ago to address this. However, they are rarely used in practice, mostly because the optimization of data- dependent criteria often results in triangulations with many thin and elongated triangles. Recently, in the field of computational geometry, higher order Delaunay triangulations (HODTs) were introduced, trying to tackle both issues at the same time-data-dependent criteria and good triangle shape. Nevertheless, most previous studies about them have been limited to theoretical aspects. In this work we present the first extensive experimental study on the practical use of HODTs, as a tool to build data-dependent TINs. We present experiments with two USGS terrains that show that HODTs can give significant improvements over the Delaunay triangulation for the criteria identified as most important for data-dependent triangulations. The resulting triangulations have data-dependent values comparable to those obtained with pure data-dependent approaches, without compromising the shape of the triangles, and are faster to compute.
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用高阶Delaunay三角剖分实现依赖数据的三角剖分
Delaunay三角剖分是建立不规则三角网(tin)来表示地形表面的标准选择。然而,Delaunay三角剖分法仅基于数据点的二维坐标,而忽略了它们的高程。人们早就认识到,有时使用其他非delaunay标准来构建tin可能是有益的。为了解决这个问题,几十年前就引入了依赖数据的三角测量法。然而,它们在实践中很少使用,主要是因为数据依赖标准的优化通常会导致许多细长三角形的三角剖分。近年来,在计算几何领域引入了高阶Delaunay三角剖分(HODTs),试图同时解决时间-数据相关准则和良好三角形形状的问题。然而,以往对它们的研究大多局限于理论层面。在这项工作中,我们提出了关于hodt实际应用的第一个广泛的实验研究,作为构建数据依赖tin的工具。我们提出了两个USGS地形的实验,表明hodt可以在Delaunay三角测量中提供显著的改进,这些标准被认为是数据依赖三角测量最重要的标准。得到的三角测量结果具有与数据相关的值,与使用纯数据相关方法获得的值相当,而不会影响三角形的形状,并且计算速度更快。
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