Do what i want, not what i did: Imitation of skills by planning sequences of actions

C Paxton, F Jonathan, M Kobilarov… - 2016 IEEE/RSJ …, 2016 - ieeexplore.ieee.org
2016 IEEE/RSJ International Conference on Intelligent Robots and …, 2016ieeexplore.ieee.org
We propose a learning-from-demonstration approach for grounding actions from expert data
and an algorithm for using these actions to perform a task in new environments. Our
approach is based on an application of sampling-based motion planning to search through
the tree of discrete, high-level actions constructed from a symbolic representation of a task.
Recursive sampling-based planning is used to explore the space of possible continuous-
space instantiations of these actions. We demonstrate the utility of our approach with a …
We propose a learning-from-demonstration approach for grounding actions from expert data and an algorithm for using these actions to perform a task in new environments. Our approach is based on an application of sampling-based motion planning to search through the tree of discrete, high-level actions constructed from a symbolic representation of a task. Recursive sampling-based planning is used to explore the space of possible continuous-space instantiations of these actions. We demonstrate the utility of our approach with a magnetic structure assembly task, showing that the robot can intelligently select a sequence of actions in different parts of the workspace and in the presence of obstacles. This approach can better adapt to new environments by selecting the correct high-level actions for the particular environment while taking human preferences into account.
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