Acquiring task models for imitation learning through games with a purpose

Intelligent Robots and Systems(2013)

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摘要
Teaching robots everyday tasks like making pancakes by instructions requires interfaces that can be intuitively operated by non-experts. By performing novel manipulation tasks in a virtual environment using a data glove task-related information of the demonstrated actions can directly be accessed and extracted from the simulator. We translate low-level data structures of these simulations into meaningful first-order representations whereby we are able to select data segments and analyze them at an abstract level. Hence, the proposed system is a powerful tool for acquiring examples of manipulation actions and for analyzing them whereby robots can be informed how to perform a task.
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关键词
data gloves,data structures,manipulators,robot programming,virtual reality,data glove task-related information,first-order representations,games,imitation learning,low-level data structures,manipulation actions,manipulation tasks,robot teaching,task models,virtual environment
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