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Neural Convolutional Surfaces

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This work is concerned with a representation of shapes that disentangles fine, local and possibly repeating geometry, from global, coarse structures. Achieving such disentanglement leads to two unrelated advantages: i) a significant compression in the number of parameters required to represent a given geometry; ii) the ability to manipulate either global geometry, or local details, without harming the other. At the core of our approach lies a novel pipeline and neural architecture, which are optimized to represent one specific atlas, representing one 3D surface. Our pipeline and architecture are designed so that disentanglement of global geometry from local details is accomplished through optimization, in a completely unsupervised manner. We show that this approach achieves better neural shape compression than the state of the art, as well as enabling manipulation and transfer of shape details. Project page at http://geometry.cs.ucl.ac.uk/projects/2022/cnnmaps/ .

Luca Morreale, Noam Aigerman, Paul Guerrero, Vladimir G. Kim, Niloy J. Mitra• 2022

Related benchmarks

TaskDatasetResultRank
Neural Shape RepresentationArmadillo
Chamfer Distance0.54
4
Neural Shape RepresentationBimba
Chamfer Distance1.04
4
Neural Shape RepresentationDino
Chamfer Distance1.48
4
Neural Shape RepresentationDragon
Chamfer Distance0.57
4
Neural Shape RepresentationElephant
Chamfer Distance2.49
4
Neural Shape RepresentationGrog
Chamfer Distance1.28
4
Neural Shape RepresentationSeahorse
Chamfer Distance0.44
3
Neural Shape RepresentationGargoyl
Chamfer Distance2.29
3
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