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Approaches to probabilistic model learning for mobile manipulation robots

Mobile manipulation robots are envisioned to provide many useful services both in domestic environments as well as in the industrial context. Examples include domestic service robots that implement large parts of the housework, and versatile industrial assistants that provide automation, transportat...

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Detalles Bibliográficos
Autor principal: Sturm, Jürgen
Lenguaje:eng
Publicado: Springer 2013
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-642-37160-8
http://cds.cern.ch/record/1555628
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author Sturm, Jürgen
author_facet Sturm, Jürgen
author_sort Sturm, Jürgen
collection CERN
description Mobile manipulation robots are envisioned to provide many useful services both in domestic environments as well as in the industrial context. Examples include domestic service robots that implement large parts of the housework, and versatile industrial assistants that provide automation, transportation, inspection, and monitoring services. The challenge in these applications is that the robots have to function under changing, real-world conditions, be able to deal with considerable amounts of noise and uncertainty, and operate without the supervision of an expert. This book presents novel learning techniques that enable mobile manipulation robots, i.e., mobile platforms with one or more robotic manipulators, to autonomously adapt to new or changing situations. The approaches presented in this book cover the following topics: (1) learning the robot's kinematic structure and properties using actuation and visual feedback, (2) learning about articulated objects in the environment in which the robot is operating, (3) using tactile feedback to augment the visual perception, and (4) learning novel manipulation tasks from human demonstrations. This book is an ideal resource for postgraduates and researchers working in robotics, computer vision, and artificial intelligence who want to get an overview on one of the following subjects: ·         kinematic modeling and learning, ·         self-calibration and life-long adaptation, ·         tactile sensing and tactile object recognition, and ·         imitation learning and programming by demonstration.
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spelling cern-15556282021-04-21T22:37:08Zdoi:10.1007/978-3-642-37160-8http://cds.cern.ch/record/1555628engSturm, JürgenApproaches to probabilistic model learning for mobile manipulation robotsEngineeringMobile manipulation robots are envisioned to provide many useful services both in domestic environments as well as in the industrial context. Examples include domestic service robots that implement large parts of the housework, and versatile industrial assistants that provide automation, transportation, inspection, and monitoring services. The challenge in these applications is that the robots have to function under changing, real-world conditions, be able to deal with considerable amounts of noise and uncertainty, and operate without the supervision of an expert. This book presents novel learning techniques that enable mobile manipulation robots, i.e., mobile platforms with one or more robotic manipulators, to autonomously adapt to new or changing situations. The approaches presented in this book cover the following topics: (1) learning the robot's kinematic structure and properties using actuation and visual feedback, (2) learning about articulated objects in the environment in which the robot is operating, (3) using tactile feedback to augment the visual perception, and (4) learning novel manipulation tasks from human demonstrations. This book is an ideal resource for postgraduates and researchers working in robotics, computer vision, and artificial intelligence who want to get an overview on one of the following subjects: ·         kinematic modeling and learning, ·         self-calibration and life-long adaptation, ·         tactile sensing and tactile object recognition, and ·         imitation learning and programming by demonstration.Springeroai:cds.cern.ch:15556282013
spellingShingle Engineering
Sturm, Jürgen
Approaches to probabilistic model learning for mobile manipulation robots
title Approaches to probabilistic model learning for mobile manipulation robots
title_full Approaches to probabilistic model learning for mobile manipulation robots
title_fullStr Approaches to probabilistic model learning for mobile manipulation robots
title_full_unstemmed Approaches to probabilistic model learning for mobile manipulation robots
title_short Approaches to probabilistic model learning for mobile manipulation robots
title_sort approaches to probabilistic model learning for mobile manipulation robots
topic Engineering
url https://dx.doi.org/10.1007/978-3-642-37160-8
http://cds.cern.ch/record/1555628
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