Dynamic Movement Primitives in Robotics: A Tutorial Survey

计算机科学 人工智能 机器人 实施 人机交互 机器人学 分类 敏捷软件开发 动力系统理论 运动(物理) 认知科学 程序设计语言 软件工程 心理学 量子力学 物理
作者
Matteo Saveriano,Fares J. Abu‐Dakka,Aljaž Kramberger,Luka Peternel
出处
期刊:Cornell University - arXiv 被引量:46
标识
DOI:10.48550/arxiv.2102.03861
摘要

Biological systems, including human beings, have the innate ability to perform complex tasks in versatile and agile manner. Researchers in sensorimotor control have tried to understand and formally define this innate property. The idea, supported by several experimental findings, that biological systems are able to combine and adapt basic units of motion into complex tasks finally lead to the formulation of the motor primitives theory. In this respect, Dynamic Movement Primitives (DMPs) represent an elegant mathematical formulation of the motor primitives as stable dynamical systems, and are well suited to generate motor commands for artificial systems like robots. In the last decades, DMPs have inspired researchers in different robotic fields including imitation and reinforcement learning, optimal control,physical interaction, and human-robot co-working, resulting a considerable amount of published papers. The goal of this tutorial survey is two-fold. On one side, we present the existing DMPs formulations in rigorous mathematical terms,and discuss advantages and limitations of each approach as well as practical implementation details. In the tutorial vein, we also search for existing implementations of presented approaches and release several others. On the other side, we provide a systematic and comprehensive review of existing literature and categorize state of the art work on DMP. The paper concludes with a discussion on the limitations of DMPs and an outline of possible research directions.
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