Learning Fast and Precise Pixel-to-Torque Control
Steffen Bleher, Steve Heim, Sebastian Trimpe

TL;DR
This paper introduces a platform for learning pixel-to-torque control on unstable systems, demonstrated on a vision-based Furuta pendulum, enabling high-frequency control and reproducible research in this challenging area.
Contribution
The authors present a flexible, reproducible platform for learning pixel-to-torque control on unstable systems, and demonstrate the first high-frequency (over 100 Hz) learning on such a system.
Findings
Successful implementation of pixel-to-torque control at over 100 Hz.
Platform supports reproducible research with off-the-shelf hardware.
First demonstration of high-frequency learning on an unstable system.
Abstract
In the field, robots often need to operate in unknown and unstructured environments, where accurate sensing and state estimation (SE) becomes a major challenge. Cameras have been used to great success in mapping and planning in such environments, as well as complex but quasi-static tasks such as grasping, but are rarely integrated into the control loop for unstable systems. Learning pixel-to-torque control promises to allow robots to flexibly handle a wider variety of tasks. Although they do not present additional theoretical obstacles, learning pixel-to-torque control for unstable systems that that require precise and high bandwidth control still poses a significant practical challenge, and best practices have not yet been established. To help drive reproducible research on the practical aspects of learning pixel-to-torque control, we propose a platform that can flexibly represent the…
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