Fr. 70.00

Analysis and Design of Machine Learning Techniques - Evolutionary Solutions for Regression, Prediction, and Control Problems

English · Paperback / Softback

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Description

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Manipulating or grasping objects seems like a trivial task for humans, as these are motor skills of everyday life. Nevertheless, motor skills are not easy to learn for humans and this is also an active research topic in robotics. However, most solutions are optimized for industrial applications and, thus, few are plausible explanations for human learning. The fundamental challenge, that motivates Patrick Stalph, originates from the cognitive science: How do humans learn their motor skills? The author makes a connection between robotics and cognitive sciences by analyzing motor skill learning using implementations that could be found in the human brain - at least to some extent. Therefore three suitable machine learning algorithms are selected - algorithms that are plausible from a cognitive viewpoint and feasible for the roboticist. The power and scalability of those algorithms is evaluated in theoretical simulations and more realistic scenarios with the iCub humanoid robot. Convincing results confirm the applicability of the approach, while the biological plausibility is discussed in retrospect.

List of contents

Introduction and Motivation.- Introduction to Function Approximation and Regression.- Elementary Features of Local Learning Algorithms.- Algorithmic Description of XCSF.- How and Why XCSF works.- Evolutionary Challenges for XCSF.- Basics of Kinematic Robot Control.- Learning Directional Control of an Anthropomorphic Arm.- Visual Servoing for the iCub.- Summary and Conclusion.

About the author

Patrick Stalph was a Ph.D. student at the chair of Cognitive Modeling, which is led by Prof. Butz at the University of Tübingen.

Summary

Manipulating or grasping objects seems like a trivial task for humans, as these are motor skills of everyday life. Nevertheless, motor skills are not easy to learn for humans and this is also an active research topic in robotics. However, most solutions are optimized for industrial applications and, thus, few are plausible explanations for human learning. The fundamental challenge, that motivates Patrick Stalph, originates from the cognitive science: How do humans learn their motor skills? The author makes a connection between robotics and cognitive sciences by analyzing motor skill learning using implementations that could be found in the human brain – at least to some extent. Therefore three suitable machine learning algorithms are selected – algorithms that are plausible from a cognitive viewpoint and feasible for the roboticist. The power and scalability of those algorithms is evaluated in theoretical simulations and more realistic scenarios with the iCub humanoid robot. Convincing results confirm the applicability of the approach, while the biological plausibility is discussed in retrospect.

Product details

Authors Patrick Stalph
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 28.02.2014
 
EAN 9783658049362
ISBN 978-3-658-04936-2
No. of pages 155
Dimensions 138 mm x 10 mm x 199 mm
Weight 236 g
Illustrations XIX, 155 p. 62 illus.
Subjects Natural sciences, medicine, IT, technology > Technology > Electronics, electrical engineering, communications engineering

C, Robotics, computer science, engineering, Computer Science, general, Neurosciences, Electronic devices & materials, Zoology, Control, Robotics, Mechatronics, Control, Robotics, Automation, Control engineering, Mechatronics, Neurobiology, Human Motor Skill Learning;Machine Learning;Robotics

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