Transactions on Machine Learning Research 2023
SolidGen
An Autoregressive Model for Direct B-rep Synthesis
Abstract
The Boundary representation (B-rep) format is the de-facto shape representation in computer-aided design (CAD) to model solid and sheet objects. Recent approaches to generating CAD models have focused on learning sketch-and-extrude modeling sequences that are executed by a solid modeling kernel in postprocess to recover a B-rep. In this paper we present a new approach that enables learning from and synthesizing B-reps without the need for supervision through CAD modeling sequence data. Our method SolidGen, is an autoregressive neural network that models the B-rep directly by predicting the vertices, edges, and faces using Transformer-based and pointer neural networks. Key to achieving this is our Indexed Boundary Representation that references B-rep vertices, edges and faces in a well-defined hierarchy to capture the geometric and topological relations suitable for use with machine learning. SolidGen can be easily conditioned on contexts e.g., class labels, images, and voxels thanks to its probabilistic modeling of the B-rep distribution. We demonstrate qualitatively, quantitatively, and through perceptual evaluation by human subjects that SolidGen can produce high quality, realistic CAD models.
Award: TMLR Featured Certification
Download publicationRelated Resources
2022
SkexGen: Autoregressive Generation of CAD Construction Sequences with Disentangled CodebooksWe present SkexGen, a novel autoregressive generative model for…
2021
UV-Net: Learning from Boundary RepresentationsWe introduce UV-Net, a novel neural network architecture and…
2022
Neon: A Multi-GPU Programming Model for Grid-based ComputationsWe present Neon, a new programming model for grid-based computation…
2021
UVStyle-Net: Unsupervised Few-shot Learning of 3D Style Similarity Measure for B-RepsBoundary Representations (B-Reps) are the industry standard in 3D…
Get in touch
Something pique your interest? Get in touch if you’d like to learn more about Autodesk Research, our projects, people, and potential collaboration opportunities.
Contact us