Correspondence learning between morphologically different robots via task demonstrations
Hakan Aktas, Yukie Nagai, Minoru Asada, Erhan Oztop, Emre Ugur

TL;DR
This paper introduces a method for learning correspondences between different robots' sensorimotor spaces, enabling skill transfer across diverse morphologies by using shared latent representations learned from task demonstrations.
Contribution
The proposed framework allows for correspondence learning between robots with different morphologies, including fixed-base manipulators and mobile robots, facilitating cross-robot skill transfer.
Findings
Successfully learned correspondences between robots with different morphologies.
Enabled transfer of tasks with varying trajectories and complexities.
Demonstrated real-to-simulation correspondence between a manipulator and a mobile robot.
Abstract
We observe a large variety of robots in terms of their bodies, sensors, and actuators. Given the commonalities in the skill sets, teaching each skill to each different robot independently is inefficient and not scalable when the large variety in the robotic landscape is considered. If we can learn the correspondences between the sensorimotor spaces of different robots, we can expect a skill that is learned in one robot can be more directly and easily transferred to other robots. In this paper, we propose a method to learn correspondences among two or more robots that may have different morphologies. To be specific, besides robots with similar morphologies with different degrees of freedom, we show that a fixed-based manipulator robot with joint control and a differential drive mobile robot can be addressed within the proposed framework. To set up the correspondence among the robots…
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Taxonomy
TopicsRobot Manipulation and Learning · Reinforcement Learning in Robotics · Domain Adaptation and Few-Shot Learning
MethodsSparse Evolutionary Training · Balanced Selection
