|
Showing 1 - 2 of
2 matches in All Departments
In the last decades robots are expected to be of increasing
intelligence to deal with a large range of tasks. Especially,
robots are supposed to be able to learn manipulation skills from
humans. To this end, a number of learning algorithms and techniques
have been developed and successfully implemented for various
robotic tasks. Among these methods, learning from demonstrations
(LfD) enables robots to effectively and efficiently acquire skills
by learning from human demonstrators, such that a robot can be
quickly programmed to perform a new task. This book introduces
recent results on the development of advanced LfD-based learning
and control approaches to improve the robot dexterous manipulation.
First, there's an introduction to the simulation tools and robot
platforms used in the authors' research. In order to enable a robot
learning of human-like adaptive skills, the book explains how to
transfer a human user's arm variable stiffness to the robot, based
on the online estimation from the muscle electromyography (EMG).
Next, the motion and impedance profiles can be both modelled by
dynamical movement primitives such that both of them can be planned
and generalized for new tasks. Furthermore, the book introduces how
to learn the correlation between signals collected from
demonstration, i.e., motion trajectory, stiffness profile estimated
from EMG and interaction force, using statistical models such as
hidden semi-Markov model and Gaussian Mixture Regression. Several
widely used human-robot interaction interfaces (such as motion
capture-based teleoperation) are presented, which allow a human
user to interact with a robot and transfer movements to it in both
simulation and real-word environments. Finally, improved
performance of robot manipulation resulted from neural network
enhanced control strategies is presented. A large number of
examples of simulation and experiments of daily life tasks are
included in this book to facilitate better understanding of the
readers.
In the last decades robots are expected to be of increasing
intelligence to deal with a large range of tasks. Especially,
robots are supposed to be able to learn manipulation skills from
humans. To this end, a number of learning algorithms and techniques
have been developed and successfully implemented for various
robotic tasks. Among these methods, learning from demonstrations
(LfD) enables robots to effectively and efficiently acquire skills
by learning from human demonstrators, such that a robot can be
quickly programmed to perform a new task. This book introduces
recent results on the development of advanced LfD-based learning
and control approaches to improve the robot dexterous manipulation.
First, there's an introduction to the simulation tools and robot
platforms used in the authors' research. In order to enable a robot
learning of human-like adaptive skills, the book explains how to
transfer a human user’s arm variable stiffness to the robot,
based on the online estimation from the muscle electromyography
(EMG). Next, the motion and impedance profiles can be both modelled
by dynamical movement primitives such that both of them can be
planned and generalized for new tasks. Furthermore, the book
introduces how to learn the correlation between signals collected
from demonstration, i.e., motion trajectory, stiffness profile
estimated from EMG and interaction force, using statistical models
such as hidden semi-Markov model and Gaussian Mixture Regression.
Several widely used human-robot interaction interfaces (such as
motion capture-based teleoperation) are presented, which allow a
human user to interact with a robot and transfer movements to it in
both simulation and real-word environments. Finally, improved
performance of robot manipulation resulted from neural network
enhanced control strategies is presented. A large number of
examples of simulation and experiments of daily life tasks are
included in this book to facilitate better understanding of the
readers.
|
You may like...
Not available
Loot
Nadine Gordimer
Paperback
(2)
R398
R369
Discovery Miles 3 690
|