Reconstructing editable prismatic CAD from rounded voxel models


연구 분야: Analysis



학회: SA '22: SIGGRAPH Asia 2022 Conference Papers


초록

Reverse Engineering a CAD shape from other representations is an important geometric processing step for many downstream applications. In this work, we introduce a novel neural network architecture to solve this challenging task and approximate a smoothed signed distance function with an editable, constrained, prismatic CAD model. During training, our method reconstructs the input geometry in the voxel space by decomposing the shape into a series of 2D profile images and 1D envelope functions. These can then be recombined in a differentiable way allowing a geometric loss function to be defined. During inference, we obtain the CAD data by first searching a database of 2D constrained sketches to find curves which approximate the profile images, then extrude them and use Boolean operations to build the final CAD model. Our method approximates the target shape more closely than other methods and outputs highly editable constrained parametric sketches which are compatible with existing CAD software.


Author Profile
Joseph George Lambourne

Autodesk United Kingdom

United Kingdom
Author Profile
Karl D D Willis

Autodesk USA

United States
Author Profile
Pradeep Kumar Jayaraman

Autodesk Canada

Canada

📄 논문 정보

발행 연도 2022년
인용수 26
출판 국가 United Kingdom, China, United States, Canada
사이트 ACM
좋아요 수 0

연관 논문 목록 (236건)