Matthew Howard, Stefan Klanke, Michael Gienger, Christian Goerick, and Sethu Vijayakumar (2009)
A Novel Method for Learning Policies from Variable Constraint Data
Autonomous Robots.
Many everyday human skills can be framed in
terms of performing some task subject to constraints imposed
by the environment.Constraints are usually unobservable
and frequently change between contexts. In this paper,
we present a novel approach for learning (unconstrained)
control policies from movement data, where observations
come from movements under different constraints. As a key
ingredient, we introduce a small but highly effective modification
to the standard risk functional, allowing us to make
a meaningful comparison between the estimated policy and
constrained observations. We demonstrate our approach on
systems of varying complexity, including kinematic data
from the ASIMO humanoid robot with 27 degrees of freedom,
and present results for learning from human demonstration.
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Created by mgienger - 2009-08-14 09:47
Last modified by - 2009-11-17 18:16
Created by mgienger - 2009-08-14 09:47
Last modified by - 2009-11-17 18:16



Howard-2009-AutonomousRobots.pdf
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