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MeshUDF: Fast and Differentiable Meshing of Unsigned Distance Field Networks

29 November 2021
Benoît Guillard
Federico Stella
Pascal Fua
ArXiv (abs)PDFHTML
Abstract

Recent work modelling 3D open surfaces train deep neural networks to approximate Unsigned Distance Fields (UDFs) and implicitly represent shapes. To convert this representation to an explicit mesh, they either use computationally expensive methods to mesh a dense point cloud sampling of the surface, or distort the surface by inflating it into a Signed Distance Field (SDF). By contrast, we propose to directly mesh deep UDFs as open surfaces with an extension of marching cubes, by locally detecting surface crossings. Our method is order of magnitude faster than meshing a dense point cloud, and more accurate than inflating open surfaces. Moreover, we make our surface extraction differentiable, and show it can help fit sparse supervision signals.

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