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.
@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}
}