Geometric Fabrics: a Safe Guiding Medium for Policy Learning
Karl Van Wyk, Ankur Handa, Viktor Makoviychuk, Yijie Guo, Arthur, Allshire, Nathan D. Ratliff

TL;DR
This paper introduces geometric fabrics as a novel, safe guiding medium for policy learning in robotics, enabling richer behaviors, safer actions, and simplified reward design through artificial, nonlinear geometric dynamics.
Contribution
It presents a new framework using geometric fabrics to shape behavioral dynamics, improving policy learning safety and expressiveness in complex robotic tasks.
Findings
Enables safe, bang-bang-like RL policy actions.
Simplifies reward engineering for complex tasks.
Demonstrates effectiveness in in-hand cube reorientation.
Abstract
Robotics policies are always subjected to complex, second order dynamics that entangle their actions with resulting states. In reinforcement learning (RL) contexts, policies have the burden of deciphering these complicated interactions over massive amounts of experience and complex reward functions to learn how to accomplish tasks. Moreover, policies typically issue actions directly to controllers like Operational Space Control (OSC) or joint PD control, which induces straightline motion towards these action targets in task or joint space. However, straightline motion in these spaces for the most part do not capture the rich, nonlinear behavior our robots need to exhibit, shifting the burden of discovering these behaviors more completely to the agent. Unlike these simpler controllers, geometric fabrics capture a much richer and desirable set of behaviors via artificial, second order…
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Taxonomy
TopicsRobot Manipulation and Learning · Reinforcement Learning in Robotics · Motor Control and Adaptation
