Robot Learning Using Multi-Coordinate Elastic Maps
Brendan Hertel, Reza Azadeh

TL;DR
This paper introduces a novel method for robot skill learning from demonstrations by encoding skills into multiple differential coordinates using an extended Elastic Maps approach, improving flexibility and accuracy.
Contribution
It presents a modified Elastic Maps technique that incorporates multiple differential coordinates and auto-tuning, enabling more effective learning of manipulation skills from demonstrations.
Findings
Effective in simulated experiments
Successful real-world writing task with UR5e
Enhanced skill reproduction accuracy
Abstract
To learn manipulation skills, robots need to understand the features of those skills. An easy way for robots to learn is through Learning from Demonstration (LfD), where the robot learns a skill from an expert demonstrator. While the main features of a skill might be captured in one differential coordinate (i.e., Cartesian), they could have meaning in other coordinates. For example, an important feature of a skill may be its shape or velocity profile, which are difficult to discover in Cartesian differential coordinate. In this work, we present a method which enables robots to learn skills from human demonstrations via encoding these skills into various differential coordinates, then determines the importance of each coordinate to reproduce the skill. We also introduce a modified form of Elastic Maps that includes multiple differential coordinates, combining statistical modeling of…
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Taxonomy
TopicsRobot Manipulation and Learning · Reinforcement Learning in Robotics · Motor Control and Adaptation
