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Robust learning from demonstrations using multidimensional SAX

机译:使用多维萨克斯的示威活动中的鲁棒学习

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Learning from demonstrations (LfD) is gaining more popularity in robotics due to its promise of providing a human-friendly technique for teaching robots new skills by robotics-naive users. The two main approaches to LfD are dynamic motor primitives (DMP) which models demonstrated motions as dynamical systems with the advantage flexibility in changing the motion's starting position, goal or speed and Gaussian Mixture Modelling/ Gaussian Mixture Regression (GMM/GMR) which represents demonstrated motions as mixtures of Gaussians with the advantage of keeping track of the correlations between different dimensions of learned motions and automatic extraction of motion variability along these dimensions. This paper introduces a third approach that relies on symbolization of demonstrated motions by extending the Symbolic Aggregate approXimation (SAX) to handle multiple dimensions of data. The proposed approach is shown through several real-world evaluations to be more resistant to confusing demonstrations that usually arise when action segmentation is automated. The paper also discusses a possible way to combine SAX based LfD withGMM/GMR in order to preserve the advantages of these two approaches while providing superior confusion resistance.
机译:从示威活动(LFD)的学习(LFD)在机器人上获得了更受欢迎的承诺,因为它为机器人天真的用户提供了用于教学机器人新技能的人类友好技术。 LFD的两种主要方法是动态电机基元(DMP),其模型显示为动态系统的运动,具有改变运动的起始位置,目标或速度和高斯混合建模/高斯混合造型/高斯混合回归(GMM / GMR)的优势灵活性,这是表示证明的作为高斯的混合物的动作,具有跟踪学习运动的不同尺寸之间的相关性以及沿着这些尺寸的自动提取运动可变性的相关性。本文介绍了一种依赖于通过扩展符号聚合近似(SAX)来处理数据的多个数据的象征的第三种方法。通过若干现实世界评估显示所提出的方法,以更具抵抗令人抵御的令人抵抗令人抵消当行动分割自动化时出现的令人抵抗。本文还讨论了将基于SAX基于LFD的LFD / GMR组合的可能方法,以保持这两种方法的优点,同时提供卓越的混淆阻力。

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