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Integer Coordinates for Intrinsic Geometry Processing (2106.00220v1)

Published 1 Jun 2021 in cs.GR and cs.CG

Abstract: In this work, we present a general, efficient, and provably robust representation for intrinsic triangulations. These triangulations have emerged as a powerful tool for robust geometry processing of surface meshes, taking a low-quality mesh and retriangulating it with high-quality intrinsic triangles. However, existing representations either support only edge flips, or do not offer a robust procedure to recover the common subdivision, that is, how the intrinsic triangulation sits along the original surface. To build a general-purpose robust structure, we extend the framework of normal coordinates, which have been deeply studied in topology, as well as the more recent idea of roundabouts from geometry processing, to support a variety of mesh processing operations like vertex insertions, edge splits, etc. The basic idea is to store an integer per mesh edge counting the number of times a curve crosses that edge. We show that this paradigm offers a highly effective representation for intrinsic triangulations with strong robustness guarantees. The resulting data structure is general and efficient, while offering a guarantee of always encoding a valid subdivision. Among other things, this allows us to generate a high-quality intrinsic Delaunay refinement of all manifold meshes in the challenging Thingi10k dataset for the first time. This enables a broad class of existing surface geometry algorithms to be applied out-of-the-box to low-quality triangulations.

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