This book presents the state of the art in reinforcement
learning applied to robotics both in terms of novel algorithms and
applications. It discusses recent approaches that allow robots to
learn motor.
skills and presents tasks that need to take into account the
dynamic behavior of the robot and its environment, where a
kinematic movement plan is not sufficient. The book illustrates a
method that learns to generalize parameterized motor plans which is
obtained by imitation or reinforcement learning, by adapting a
small set of global parameters and appropriate kernel-based
reinforcement learning algorithms. The presented applications
explore highly dynamic tasks and exhibit a very efficient learning
process. All proposed approaches have been extensively validated
with benchmarks tasks, in simulation and on real robots. These
tasks correspond to sports and games but the presented techniques
are also applicable to more mundane household tasks. The book is
based on the first author s doctoral thesis, which won the 2013
EURON Georges Giralt PhD Award."
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