Skill decomposition by self-categorizing stimulus-response units
Hsien-I Lin, C. S. George Lee
- Year
- 2008
- Citations
- 4
Abstract
Endowing robots with the ability of skill learning enables them to be versatile and skillful in performing various tasks. This paper proposes a skill-decomposition framework, which differs from previous work in its capability of decomposing a skill by self-categorizing it into significant stimulusresponse units (SRU). The proposed skill-decomposition framework can be realized by stages with a 5-layer neuro-fuzzy network with supervised learning, resolution control and reinforcement learning, to enable robots to identify a sufficient number of significant SRUs for accomplishing a given task. Computer simulations and experiments with a Pioneer DX-3 mobile robot were conducted to validate the self-categorization capability of the proposed skill-decomposition framework in learning and identifying significant SRUs from task examples.
Keywords
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