Neural Parametric Surfaces for Shape Modeling

09/18/2023
by   Lei Yang, et al.
0

The recent surge of utilizing deep neural networks for geometric processing and shape modeling has opened up exciting avenues. However, there is a conspicuous lack of research efforts on using powerful neural representations to extend the capabilities of parametric surfaces, which are the prevalent surface representations in product design, CAD/CAM, and computer animation. We present Neural Parametric Surfaces, the first piecewise neural surface representation that allows coarse patch layouts of arbitrary n-sided surface patches to model complex surface geometries with high precision, offering greater flexibility over traditional parametric surfaces. By construction, this new surface representation guarantees G^0 continuity between adjacent patches and empirically achieves G^1 continuity, which cannot be attained by existing neural patch-based methods. The key ingredient of our neural parametric surface is a learnable feature complex 𝒞 that is embedded in a high-dimensional space ℝ^D and topologically equivalent to the patch layout of the surface; each face cell of the complex is defined by interpolating feature vectors at its vertices. The learned feature complex is mapped by an MLP-encoded function f:𝒞→𝒮 to produce the neural parametric surface 𝒮. We present a surface fitting algorithm that optimizes the feature complex 𝒞 and trains the neural mapping f to reconstruct given target shapes with high accuracy. We further show that the proposed representation along with a compact-size neural net can learn a plausible shape space from a shape collection, which can be used for shape interpolation or shape completion from noisy and incomplete input data. Extensive experiments show that neural parametric surfaces offer greater modeling capabilities than traditional parametric surfaces.

READ FULL TEXT

page 1

page 6

page 8

page 9

page 11

page 13

page 14

page 15

research
07/02/2022

Corner-based implicit patches

Multi-sided surfaces are often defined by side interpolants (also called...
research
02/03/2016

Smooth surface interpolation using patches with rational offsets

We present a new method for the interpolation of given data points and a...
research
08/26/2023

Patch-Grid: An Efficient and Feature-Preserving Neural Implicit Surface Representation

Neural implicit representations are known to be more compact for depicti...
research
11/25/2019

Shape Reconstruction by Learning Differentiable Surface Representations

Generative models that produce point clouds have emerged as a powerful t...
research
06/14/2021

Toward Automatic Interpretation of 3D Plots

This paper explores the challenge of teaching a machine how to reverse-e...
research
03/22/2005

Analytic Definition of Curves and Surfaces by Parabolic Blending

A procedure for interpolating between specified points of a curve or sur...
research
12/15/2018

ABC: A Big CAD Model Dataset For Geometric Deep Learning

We introduce ABC-Dataset, a collection of one million Computer-Aided Des...

Please sign up or login with your details

Forgot password? Click here to reset