Programming-by-Demonstration of reaching motions-A next-state-planner approach

Robotics and Autonomous Systems(2010)

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摘要
This paper presents a novel approach to skill acquisition from human demonstration. A robot manipulator with a morphology which is very different from the human arm simply cannot copy a human motion, but has to execute its own version of the skill. When a skill once has been acquired the robot must also be able to generalize to other similar skills, without a new learning process. By using a motion planner that operates in an object-related world frame called hand-state, we show that this representation simplifies skill reconstruction and preserves the essential parts of the skill.
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关键词
skill acquisition,human motion,fuzzy modeling,programming-by-demonstration,hand-state,correspondence problem,essential part,motion planner,motions-a next-state-planner approach,similar skill,new learning process,human arm,robot manipulator,representation simplifies skill reconstruction,human demonstration,automatic control,control engineering
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