DocumentCode
1283160
Title
Goal Babbling Permits Direct Learning of Inverse Kinematics
Author
Rolf, Matthias ; Steil, Jochen J. ; Gienger, Michael
Author_Institution
Res. Inst. for Cognition & Robot. (CoR-Lab.), Bielefeld Univ., Bielefeld, Germany
Volume
2
Issue
3
fYear
2010
Firstpage
216
Lastpage
229
Abstract
We present an approach to learn inverse kinematics of redundant systems without prior- or expert-knowledge. The method allows for an iterative bootstrapping and refinement of the inverse kinematics estimate. The essential novelty lies in a path-based sampling approach: we generate training data along paths, which result from execution of the currently learned estimate along a desired path towards a goal. The information structure thereby induced enables an efficient detection and resolution of inconsistent samples solely from directly observable data. We derive and illustrate the exploration and learning process with a low-dimensional kinematic example that provides direct insight into the bootstrapping process. We further show that the method scales for high dimensional problems, such as the Honda humanoid robot or hyperredundant planar arms with up to 50 degrees of freedom.
Keywords
computer bootstrapping; expert systems; humanoid robots; iterative methods; learning (artificial intelligence); path planning; redundancy; robot kinematics; Honda humanoid robot; expert-knowledge; goal babbling permit direct learning; inverse kinematics; iterative bootstrapping; low-dimensional kinematics; path-based sampling; redundant system; Biological system modeling; Humanoid robots; Humans; Inverse problems; Iterative methods; Manipulators; Pediatrics; Predictive models; Robot kinematics; Sampling methods; Goal babbling; inverse kinematics; motor exploration; motor learning;
fLanguage
English
Journal_Title
Autonomous Mental Development, IEEE Transactions on
Publisher
ieee
ISSN
1943-0604
Type
jour
DOI
10.1109/TAMD.2010.2062511
Filename
5535131
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