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Geometry-Consistent Neural Shape Representation with Implicit Displacement Fields

About

We present implicit displacement fields, a novel representation for detailed 3D geometry. Inspired by a classic surface deformation technique, displacement mapping, our method represents a complex surface as a smooth base surface plus a displacement along the base's normal directions, resulting in a frequency-based shape decomposition, where the high frequency signal is constrained geometrically by the low frequency signal. Importantly, this disentanglement is unsupervised thanks to a tailored architectural design that has an innate frequency hierarchy by construction. We explore implicit displacement field surface reconstruction and detail transfer and demonstrate superior representational power, training stability and generalizability.

Wang Yifan, Lukas Rahmann, Olga Sorkine-Hornung• 2021

Related benchmarks

TaskDatasetResultRank
Neural Shape RepresentationGrog
Chamfer Distance0.81
4
Neural Shape RepresentationArmadillo
Chamfer Distance1.06
4
Neural Shape RepresentationDragon
Chamfer Distance0.62
4
Neural Shape RepresentationBimba
Chamfer Distance2.09
4
Neural Shape RepresentationElephant
Chamfer Distance3.93
4
Neural Shape RepresentationDino
Chamfer Distance2.55
4
Neural Shape RepresentationGargoyl
Chamfer Distance8.51
3
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