Geometric Fabrics: Generalizing Classical Mechanics to Capture the Physics of Behavior

Karl Van Wyk1, Man Xie, Anqi Li, Muhammad Asif Rana2, Buck Babich1, Bryan Peele3, Qian Wan4, Iretiayo Akinola5, Balakumar Sundaralingam3, Dieter Fox6, Byron Boots6, Nathan Ratliff1

  • 1NVIDIA
  • 2Georgia Institute of Technology
  • 3NVIDIA Corporation
  • 4Harvard University
  • 5Columbia University
  • 6University of Washington

Details

10:55 - 11:00 | Wed 25 May | Room 118B | WeA11.10

Session: Sensing and Dynamics

Abstract

Classical mechanical systems are central to controller design in energy shaping methods of geometric control. However, their expressivity is limited by position-only metrics and the intimate link between metric and geometry. Recent work on Riemannian Motion Policies (RMPs) has shown that shedding these restrictions results in powerful design tools, but at the expense of theoretical stability guarantees. In this work, we generalize classical mechanics to what we call geometric fabrics, whose expressivity and theory enable the design of systems that outperform RMPs in practice. Geometric fabrics strictly generalize classical mechanics forming a new physics of behavior by first generalizing them to Finsler geometries and then explicitly bending them to shape their behavior while maintaining stability. We develop the theory of fabrics and present both a collection of controlled experiments examining their theoretical properties and a set of robot system experiments showing improved performance over a well-engineered and hardened implementation of RMPs, our current state-of-the-art in controller design.