ContactSDF: Signed Distance Functions as Multi-Contact Models for Dexterous Manipulation
In this paper, we propose ContactSDF, a method that uses signed distance functions (SDFs) to approximate multi-contact models, including both collision detection and time-stepping routines. ContactSDF first establishes an SDF using the supporting plane representation of an object for collision detec...
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Zusammenfassung: | In this paper, we propose ContactSDF, a method that uses signed distance
functions (SDFs) to approximate multi-contact models, including both collision
detection and time-stepping routines. ContactSDF first establishes an SDF using
the supporting plane representation of an object for collision detection, and
then use the generated contact dual cones to build a second SDF for time
stepping prediction of the next state. Those two SDFs create a differentiable
and closed-form multi-contact dynamic model for state prediction, enabling
efficient model learning and optimization for contact-rich manipulation. We
perform extensive simulation experiments to show the effectiveness of
ContactSDF for model learning and real-time control of dexterous manipulation.
We further evaluate the ContactSDF on a hardware Allegro hand for on-palm
reorientation tasks. Results show with around 2 minutes of learning on
hardware, the ContactSDF achieves high-quality dexterous manipulation at a
frequency of 30-60Hz. |
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DOI: | 10.48550/arxiv.2408.09612 |