異なるロボット間で同一スキルを共有可能にする新フレームワーク(How to teach the same skill to different robots)

2026-04-16 スイス連邦工科大学ローザンヌ校(EPFL)

本記事は、異なるロボットに同一スキルを効率的に学習させる新手法について紹介している。スイス連邦工科大学ローザンヌ校(EPFL)の研究チームは、ロボット固有の構造差(関節数や形状)に依存せず、共通の動作表現を用いることでスキル転移を可能にした。この方法では、タスクの本質的な動作を抽象化し、各ロボットの身体構造に適応させることで、個別に再学習する必要を減らす。実験では異なるロボット間での動作再現に成功し、ロボット開発の効率化と柔軟性向上に寄与することが示された。今後は産業やサービス分野での応用が期待される。

異なるロボット間で同一スキルを共有可能にする新フレームワーク(How to teach the same skill to different robots)
The assembly line task setup. 2026 LASA EPFL CC BY SA

<関連情報>

一度実証すれば、複数台で実行可能:ロボット間スキル転移のための運動学的知能 Demonstrate once, execute on many: Kinematic intelligence for cross-robot skill transfer

Sthithpragya Gupta, Durgesh Haribhau Salunkhe, and Aude Billard
Science Robotics  Published:15 Apr 2026
DOI:https://doi.org/10.1126/scirobotics.aea1995

Abstract

Teaching robots new skills should be as natural as showing rather than programming. Learning from demonstration (LfD) moves toward this goal by allowing users to guide a robot or sketch a desired motion, enabling learning without writing a line of code. However, most LfD methods remain tied to the robot they were trained on. Changes in morphology, different link lengths, joint orientations, or limits often break the learned behavior, making retraining unavoidable. Here, we introduce a framework that endows robots with kinematic intelligence: an internal understanding of their own joint limits, singularities, and connectivity. Instead of correcting for these constraints after learning, we embedded them directly into the control policy from the outset. The approach takes one or multiple demonstrations, extracts a globally stable dynamical system, and produces behaviors that remain valid across robots with different kinematic structures. Our method is grounded in a comprehensive analytical classification of noncuspidal three-revolute (3R) robots, which form the building blocks of many commercial robots. This classification enables a joint space policy that preserves user intent and adapts to robot-specific constraints. We validated the framework on diverse simulated and real robots, both redundant and nonredundant, with varied link geometries and joint configurations. The demonstrated skill executes safely and consistently across robots without retuning, thereby achieving cross-robot skill transfer.

0109ロボット
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