Sparse incremental learning for interactive robot control policy estimation

We are interested in transferring control policies for arbitrary tasks from a human to a robot. Using interactive demonstration via teleoperation as our transfer scenario, we cast learning as statistical regression over sensor-actuator data pairs. Our desire for interactive learning necessitates alg...

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Bibliographic Details
Published in2008 IEEE International Conference on Robotics and Automation pp. 3315 - 3320
Main Authors Grollman, D.H., Jenkins, O.C.
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.05.2008
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ISBN1424416469
9781424416462
ISSN1050-4729
DOI10.1109/ROBOT.2008.4543716

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Summary:We are interested in transferring control policies for arbitrary tasks from a human to a robot. Using interactive demonstration via teleoperation as our transfer scenario, we cast learning as statistical regression over sensor-actuator data pairs. Our desire for interactive learning necessitates algorithms that are incremental and realtime. We examine locally weighted projection regression, a popular robotic learning algorithm, and sparse online Gaussian processes in this domain on one synthetic and several robot-generated data sets. We evaluate each algorithm in terms of function approximation, learned task performance, and scalability to large data sets.
ISBN:1424416469
9781424416462
ISSN:1050-4729
DOI:10.1109/ROBOT.2008.4543716