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Learning Motor Skills - From Algorithms to Robot Experiments (Hardcover, 2014 ed.): Jens Kober, Jan Peters Learning Motor Skills - From Algorithms to Robot Experiments (Hardcover, 2014 ed.)
Jens Kober, Jan Peters
R2,794 Discovery Miles 27 940 Ships in 10 - 15 working days

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."

Learning Motor Skills - From Algorithms to Robot Experiments (Paperback, Softcover reprint of the original 1st ed. 2014): Jens... Learning Motor Skills - From Algorithms to Robot Experiments (Paperback, Softcover reprint of the original 1st ed. 2014)
Jens Kober, Jan Peters
R3,334 Discovery Miles 33 340 Ships in 10 - 15 working days

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.

Interactive Imitation Learning in Robotics - A Survey (Paperback): Carlos Celemin, Rodrigo Perez-Dattari, Eugenio Chisari,... Interactive Imitation Learning in Robotics - A Survey (Paperback)
Carlos Celemin, Rodrigo Perez-Dattari, Eugenio Chisari, Giovanni Franzese, Leandro de Souza Rosa, …
R2,232 Discovery Miles 22 320 Ships in 10 - 15 working days

Existing robotics technology is still mostly limited to being used by expert programmers who can adapt the systems to new required conditions, but not flexible and adaptable by non-expert workers or end-users. Imitation Learning (IL) has obtained considerable attention as a potential direction for enabling all kinds of users to easily program the behavior of robots or virtual agents. Interactive Imitation Learning (IIL) is a branch of Imitation Learning (IL) where human feedback is provided intermittently during robot execution allowing an online improvement of the robot's behavior. In this monograph, research in IIL is presented and low entry barriers for new practitioners are facilitated by providing a survey of the field that unifies and structures it. In addition, awareness of its potential is raised, what has been accomplished and what are still open research questions being covered. Highlighted are the most relevant works in IIL in terms of human-robot interaction (i.e., types of feedback), interfaces (i.e., means of providing feedback), learning (i.e., models learned from feedback and function approximators), user experience (i.e., human perception about the learning process), applications, and benchmarks. Furthermore, similarities and differences between IIL and Reinforcement Learning (RL) are analyzed, providing a discussion on how the concepts offline, online, off-policy and on-policy learning should be transferred to IIL from the RL literature. Particular focus is given to robotic applications in the real world and their implications are discussed, and limitations and promising future areas of research are provided.

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