Publication | Closed Access
Learning in-contact control strategies from demonstration
56
Citations
16
References
2016
Year
Unknown Venue
Robot KinematicsEngineeringDexterous ManipulationHsmm State BeliefIntelligent RoboticsEducationMotor ControlObject ManipulationLearning ControlKinesiologySystems EngineeringRobot LearningKinematicsMechatronicsIn-contact Control StrategiesDoor HandleComputer ScienceRobot ControlCartesian Impedance ControlAutomationMechanical SystemsTechnologyRobotics
Learning to perform tasks like pulling a door handle or pushing a button, inherently easy for a human, can be surprisingly difficult for a robot. A crucial problem in these kinds of in-contact tasks is the context specificity of pose and force requirements. In this paper, a robot learns in-contact tasks from human kinesthetic demonstrations. To address the need to balance between the position and force constraints, we propose a model based on the hidden semi-Markov model (HSMM) and Cartesian impedance control. The model captures uncertainty over time and space and allows the robot to smoothly satisfy a task's position and force constraints by online modulation of impedance controller stiffness according to the HSMM state belief. In experiments, a KUKA LWR 4+ robotic arm equipped with a force/torque sensor at the wrist successfully learns from human demonstrations how to pull a door handle and push a button.
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