In-Hand Object Rotation via Rapid Motor Adaptation
Preprint 2022 en
Authors
HQ
Haozhi Qi
AK
Ashish Kumar
RC
Roberto Calandra
Abstract
1 min read
Generalized in-hand manipulation has long been an unsolved challenge of robotics. As a small step towards this grand goal, we demonstrate how to design and learn a simple adaptive controller to achieve in-hand object rotation using only fingertips. The controller is trained entirely in simulation on only cylindrical objects, which then - without any fine-tuning - can be directly deployed to a real robot hand to rotate dozens of objects with diverse sizes, shapes, and weights over the z-axis. This is achieved via rapid online adaptation of the controller to the object properties using only proprioception history. Furthermore, natural and stable finger gaits automatically emerge from training the control policy via reinforcement learning. Code and more videos are available at https://haozhi.io/hora
Sudharshan Suresh, Haozhi Qi, Tingfan Wu, Taosha Fan, Luis A. Pineda, Mike Lambeta, Jitendra Malik, Mrinal Kalakrishnan, Roberto Calandra, Michael Kaess, Joseph D. Ortiz, Mustafa Mukadam
Sudharshan Suresh, Haozhi Qi, Tingfan Wu, Taosha Fan, Luis A. Pineda, Mike Lambeta, Jitendra Malik, Mrinal Kalakrishnan, Roberto Calandra, Michael Kaess, Joseph D. Ortiz, Mustafa Mukadam
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