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Phase-Amplitude Reduction-Based Imitation Learning

6 June 2024
Satoshi Yamamori
Jun Morimoto
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Abstract

In this study, we propose the use of the phase-amplitude reduction method to construct an imitation learning framework. Imitating human movement trajectories is recognized as a promising strategy for generating a range of human-like robot movements. Unlike previous dynamical system-based imitation learning approaches, our proposed method allows the robot not only to imitate a limit cycle trajectory but also to replicate the transient movement from the initial or disturbed state to the limit cycle. Consequently, our method offers a safer imitation learning approach that avoids generating unpredictable motions immediately after disturbances or from a specified initial state. We first validated our proposed method by reconstructing a simple limit-cycle attractor. We then compared the proposed approach with a conventional method on a lemniscate trajectory tracking task with a simulated robot arm. Our findings confirm that our proposed method can more accurately generate transient movements to converge on a target periodic attractor compared to the previous standard approach. Subsequently, we applied our method to a real robot arm to imitate periodic human movements.

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@article{yamamori2025_2406.03735,
  title={ Phase-Amplitude Reduction-Based Imitation Learning },
  author={ Satoshi Yamamori and Jun Morimoto },
  journal={arXiv preprint arXiv:2406.03735},
  year={ 2025 }
}
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