Bi-Manual Manipulation and Attachment via Sim-to-Real Reinforcement Learning
Satoshi Kataoka, Seyed Kamyar Seyed Ghasemipour, Daniel Freeman, Igor, Mordatch

TL;DR
This paper presents a reinforcement learning approach for bi-manual robotic manipulation trained in simulation and successfully transferred to real robots, focusing on coordination, collision avoidance, and magnetic attachment tasks.
Contribution
The work introduces a novel RL method for bi-manual control in simulation that is directly applicable to real robots, simplifying control and environment design.
Findings
100% success in block pickup
65% success in Connect Task
Effective sim-to-real transfer for bi-manual manipulation
Abstract
Most successes in robotic manipulation have been restricted to single-arm robots, which limits the range of solvable tasks to pick-and-place, insertion, and objects rearrangement. In contrast, dual and multi arm robot platforms unlock a rich diversity of problems that can be tackled, such as laundry folding and executing cooking skills. However, developing controllers for multi-arm robots is complexified by a number of unique challenges, such as the need for coordinated bimanual behaviors, and collision avoidance amongst robots. Given these challenges, in this work we study how to solve bi-manual tasks using reinforcement learning (RL) trained in simulation, such that the resulting policies can be executed on real robotic platforms. Our RL approach results in significant simplifications due to using real-time (4Hz) joint-space control and directly passing unfiltered observations to…
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Taxonomy
TopicsRobot Manipulation and Learning · Reinforcement Learning in Robotics · Motor Control and Adaptation
