Fabrication-Aware Reverse Engineering for Carpentry

ICML 2022
James Noeckel1, Benjamin T. Jones1, Karl Willis2, Brian Curless1, and Adriana Schulz1
1University of Washington
2Autodesk

overview

Abstract

We describe our work on inferring the degrees of freedom between mated parts in mechanical assemblies using deep learning on CAD representations. We train our model using a large dataset of real-world mechanical assemblies consisting of CAD parts and mates joining them together. We present methods for re-defining these mates to make them better reflect the motion of the assembly, as well as narrowing down the possible axes of motion. We also conduct a user study to create a motion-annotated test set with more reliable labels.

Paper

Main paper
Published in the ICML 2022 Workshop on Machine Learning in Computational Design

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Overview

Citation

@misc{noeckel2022mates2motion,
title={Mates2Motion: Learning How Mechanical CAD Assemblies Work},
author={James Noeckel and Benjamin T. Jones and Karl Willis and Brian Curless and Adriana Schulz},
year={2022},
eprint={2208.01779},
archivePrefix={arXiv},
primaryClass={cs.CV}
}


Acknowledgements: This work was funded by the UW Reality Lab, Meta, Google, OPPO, and Amazon.