IEEE Trans Vis Comput Graph. 2014 Jun;20(6):919-34. doi: 10.1109/TVCG.2013.253.
Surface meshing plays a fundamental role in graphics and visualization. Many geometric processing tasks involve solving geometric PDEs on meshes. The numerical stability, convergence rates and approximation errors are largely determined by the mesh qualities. In practice, Delaunay refinement algorithms offer satisfactory solutions to high quality mesh generations. The theoretical proofs for volume based and surface based Delaunay refinement algorithms have been established, but those for conformal parameterization based ones remain wide open. This work focuses on the curvature measure convergence for the conformal parameterization based Delaunay refinement algorithms. Given a metric surface, the proposed approach triangulates its conformal uniformization domain by the planar Delaunay refinement algorithms, and produces a high quality mesh. We give explicit estimates for the Hausdorff distance, the normal deviation, and the differences in curvature measures between the surface and the mesh. In contrast to the conventional results based on volumetric Delaunay refinement, our stronger estimates are independent of the mesh structure and directly guarantee the convergence of curvature measures. Meanwhile, our result on Gaussian curvature measure is intrinsic to the Riemannian metric and independent of the embedding. In practice, our meshing algorithm is much easier to implement and much more efficient. The experimental results verified our theoretical results and demonstrated the efficiency of the meshing algorithm.
曲面网格在图形和可视化中起着基本作用。许多几何处理任务都涉及在网格上求解几何偏微分方程。数值稳定性、收敛速度和逼近误差在很大程度上取决于网格质量。在实践中,Delaunay 细化算法为高质量网格生成提供了令人满意的解决方案。基于体积和基于曲面的 Delaunay 细化算法的理论证明已经建立,但基于共形参数化的算法的理论证明仍有待进一步研究。这项工作专注于基于共形参数化的 Delaunay 细化算法的曲率度量收敛性。给定一个度量曲面,我们提出的方法通过平面 Delaunay 细化算法对其共形均匀化域进行三角剖分,并生成高质量的网格。我们给出了曲面和网格之间的 Hausdorff 距离、法向偏差和曲率测度差异的显式估计。与基于体积 Delaunay 细化的传统结果相比,我们更强的估计与网格结构无关,直接保证了曲率测度的收敛性。同时,我们关于高斯曲率测度的结果是内蕴于黎曼度量的,与嵌入无关。在实践中,我们的网格算法更容易实现,效率更高。实验结果验证了我们的理论结果,并展示了网格算法的效率。