Pattern-preserving-based motion imitation for robots

Bonggun Shin, Sungho Jo
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引用次数: 1

Abstract

This paper presents a new algorithm of encoding dynamic movements through pattern-preserving optimization by a physical robot. This research follows a recent robot programming approach called learning from demonstration in which the motion trajectory is learned from human demonstrations. The motivation of this work is to deal with major challenges in learning from demonstration such as embodiment mapping, generalization, adaptation, robustness to perturbations, stability, pattern-preserving, and parameter tuning. We propose a new method that can deal with those problems and present empirical results to support our insistence.
基于模式保存的机器人运动模拟
提出了一种基于模式保持优化的物理机器人动态运动编码新算法。这项研究遵循了最近的一种机器人编程方法,称为从演示中学习,其中运动轨迹是从人类演示中学习的。这项工作的动机是处理从演示中学习的主要挑战,如体现映射、泛化、自适应、对扰动的鲁棒性、稳定性、模式保持和参数调整。我们提出了一种新的方法来处理这些问题,并给出了实证结果来支持我们的坚持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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