DocumentCode
3262220
Title
Force-based robot learning of pouring skills using parametric hidden Markov models
Author
Rozo, Leonel ; Jimenez, Pedro ; Torras, Carme
Author_Institution
Dept. of Adv. Robot., Ist. Italiano di Tecnol., Genoa, Italy
fYear
2013
fDate
3-5 July 2013
Firstpage
227
Lastpage
232
Abstract
Robot learning from demonstration faces new challenges when applied to tasks in which forces play a key role. Pouring liquid from a bottle into a glass is one such task, where not just a motion with a certain force profile needs to be learned, but the motion is subtly conditioned by the amount of liquid in the bottle. In this paper, the pouring skill is taught to a robot as follows. In a training phase, the human teleoperates the robot using a haptic device, and data from the demonstrations are statistically encoded by a parametric hidden Markov model, which compactly encapsulates the relation between the task parameter (dependent on the bottle weight) and the force-torque traces. Gaussian mixture regression is then used at the reproduction stage for retrieving the suitable robot actions based on the force perceptions. Computational and experimental results show that the robot is able to learn to pour drinks using the proposed framework, outperforming other approaches such as the classical hidden Markov models in that it requires less training, yields more compact encodings and shows better generalization capabilities.
Keywords
force control; haptic interfaces; hidden Markov models; intelligent robots; learning by example; manipulators; telerobotics; Gaussian mixture regression; encoding; force perceptions; force profile; force-based robot learning; force-torque traces; haptic device; human teleoperation; liquid pouring; parametric hidden Markov models; pouring skills; reproduction stage; task parameter; training phase; Computational modeling; Fluids; Glass; Haptic interfaces; Hidden Markov models; Markov processes; Robots;
fLanguage
English
Publisher
ieee
Conference_Titel
Robot Motion and Control (RoMoCo), 2013 9th Workshop on
Conference_Location
Kuslin
Print_ISBN
978-1-4673-5510-0
Type
conf
DOI
10.1109/RoMoCo.2013.6614613
Filename
6614613
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