Robot learning from demonstration by constructing skill trees
George Konidaris, Scott Kuindersma, Roderic A. Grupen, Andrew G. Barto
- 发表年份
- 2011
- 引用次数
- 300
摘要
We describe CST, an online algorithm for constructing skill trees from demonstration trajectories. CST segments a demonstration trajectory into a chain of component skills, where each skill has a goal and is assigned a suitable abstraction from an abstraction library. These properties permit skills to be improved efficiently using a policy learning algorithm. Chains from multiple demonstration trajectories are merged into a skill tree. We show that CST can be used to acquire skills from human demonstration in a dynamic continuous domain, and from both expert demonstration and learned control sequences on the uBot-5 mobile manipulator.
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