Publication | Closed Access
Learning parameterized motor skills on a humanoid robot
38
Citations
10
References
2014
Year
Unknown Venue
Artificial IntelligenceMotor LearningEngineeringMachine LearningMotor SkillIntelligent RoboticsMotor ControlObject ManipulationIntelligent SystemsLearning ControlKinesiologyRobot LearningKinematicsHumanoid RobotHealth SciencesRelated Motor TasksMotion SynthesisReusable Parameterized SkillsAction Model LearningComputer SciencePolicy ManifoldHuman MovementRobotics
We demonstrate a sample-efficient method for constructing reusable parameterized skills that can solve families of related motor tasks. Our method uses learned policies to analyze the policy space topology and learn a set of regression models which, given a novel task, appropriately parameterizes an underlying low-level controller. By identifying the disjoint charts that compose the policy manifold, the method can separately model the qualitatively different sub-skills required for solving distinct classes of tasks. Such sub-skills are useful because they can be treated as new discrete, specialized actions by higher-level planning processes. We also propose a method for reusing seemingly unsuccessful policies as additional, valid training samples for synthesizing the skill, thus accelerating learning. We evaluate our method on a humanoid iCub robot tasked with learning to accurately throw plastic balls at parameterized target locations.
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