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MeshUDF: Fast and Differentiable Meshing of Unsigned Distance Field Networks (2111.14549v4)

Published 29 Nov 2021 in cs.CV

Abstract: Unsigned Distance Fields (UDFs) can be used to represent non-watertight surfaces. However, current approaches to converting them into explicit meshes tend to either be expensive or to degrade the accuracy. Here, we extend the marching cube algorithm to handle UDFs, both fast and accurately. Moreover, our approach to surface extraction is differentiable, which is key to using pretrained UDF networks to fit sparse data.

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