Learning task-parameterized dynamic movement primitives using mixture of GMMs

被引:0
作者
Affan Pervez
Dongheui Lee
机构
[1] Technical University of Munich,Chair of Automatic Control Engineering
来源
Intelligent Service Robotics | 2018年 / 11卷
关键词
Programming by demonstration; Dynamic movement primitives; Task-parameterized movement;
D O I
暂无
中图分类号
学科分类号
摘要
Task-parameterized skill learning aims at adaptive motion encoding to new situations. While existing approaches for task-parameterized skill learning have demonstrated good adaptation within the demonstrated region, the extrapolation problem of task-parameterized skills has not been investigated enough. In this work, with the aim of good adaptation not only within the demonstrated region but also outside of the region, we propose to combine a generative model with a dynamic movement primitive by formulating learning as a density estimation problem. Moreover, for efficient learning from relatively few demonstrations, we propose to augment training data with additional incomplete data. The proposed method is tested and compared with existing works in simulations and real robot experiments. Experimental results verified its generalization in the extrapolation region.
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页码:61 / 78
页数:17
相关论文
共 28 条
[1]  
Bishop CM(2007)Generative or discriminative? Getting the best of both worlds Bayesian Stat 8 3-24
[2]  
Lasserre J(2016)A tutorial on task-parameterized movement learning and retrieval Intell Serv Robot 9 1-29
[3]  
Calinon S(2012)On-line motion synthesis and adaptation using a trajectory database Robot Auton Syst 60 1327-1339
[4]  
Forte D(2009)On-line learning and modulation of periodic movements with nonlinear dynamical systems Auton Robots 27 3-23
[5]  
Gams A(2002)On discriminative versus generative classifiers: a comparison of logistic regression and naive bayes Adv Neural Inf Process Syst 14 841-131
[6]  
Morimoto J(2011)Incremental kinesthetic teaching of motion primitives using the motion refinement tube Auton Robots 31 115-1704
[7]  
Ude A(2010)Mimetic communication model with compliant physical contact in human humanoid interaction Int J Robot Res 29 1684-500
[8]  
Gams A(2011)Learning parametric dynamic movement primitives from multiple demonstrations Neural Netw 24 493-3015
[9]  
Ijspeert AJ(2010)Gaussian processes for machine learning (GPML) toolbox J Mach Learn Res 11 3011-815
[10]  
Schaal S(2010)Task-specific generalization of discrete and periodic dynamic movement primitives IEEE Trans Robot 26 800-282