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Symmetric Volume Maps

2022-02-05 14:44:37
S. Mazdak Abulnaga, Oded Stein, Polina Golland, Justin Solomon

Abstract

Although shape correspondence is a central problem in geometry processing, most methods for this task apply only to two-dimensional surfaces. The neglected task of volumetric correspondence--a natural extension relevant to shapes extracted from simulation, medical imaging, volume rendering, and even improving surface maps of boundary representations--presents unique challenges that do not appear in the two-dimensional case. In this work, we propose a method for mapping between volumes represented as tetrahedral meshes. Our formulation minimizes a distortion energy designed to extract maps symmetrically, i.e., without dependence on the ordering of the source and target domains. We accompany our method with theoretical discussion describing the consequences of this symmetry assumption, leading us to select a symmetrized ARAP energy that favors isometric correspondences. Our final formulation optimizes for near-isometry while matching the boundary. We demonstrate our method on a diverse geometric dataset, producing low-distortion matchings that align to the boundary.

Abstract (translated)

URL

https://arxiv.org/abs/2202.02568

PDF

https://arxiv.org/pdf/2202.02568.pdf


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