Learning Generalizable Robot Skills from Demonstrations in Cluttered Environments

2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2018)

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摘要
Learning from Demonstration (LfD) is a popular approach to endowing robots with skills without having to program them by hand. Typically, LfD relies on human demonstrations in clutter-free environments. This prevents the demonstrations from being affected by irrelevant objects, whose influence can obfuscate the true intention of the human or the constraints of the desired skill. However, it is unrealistic to assume that the robot's environment can always be restructured to remove clutter when capturing human demonstrations. To contend with this problem, we develop an importance weighted batch and incremental skill learning approach, building on a recent inference-based technique for skill representation and reproduction. Our approach reduces unwanted environmental influences on the learned skill, while still capturing the salient human behavior. We provide both batch and incremental versions of our approach and validate our algorithms on a 7-DOF JACO2 manipulator with reaching and placing skills.
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关键词
learning from demonstration,LfD approach,reaching skills,placing skills,7-DOF JACO2 manipulator,clutter-free environments,human demonstrations,cluttered environments,generalizable robot skills,salient human behavior,recent inference-based technique,incremental skill learning approach,importance weighted batch
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