51513.pdf

Dynamical models of robots performing tasks in contact with objects or the environment are difficult to obtain. Therefore, different methods of learning the dynamics of tasks have been proposed. In this chapter, we present a method that provides the joint torques needed to execute a task in a compli...

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Γλώσσα:English
Έκδοση: InTechOpen 2021
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spelling oapen-20.500.12657-491502021-11-23T13:56:40Z Chapter Viscoelasticity in Foot-Ground Interaction Naemi, Roozbeh Behforootan, Sara Chatzistergos, Panagiotis Chockalingam, Nachiappan compliant movements, adaptive system, learning system, robot control, learning by demonstration bic Book Industry Communication::U Computing & information technology::UY Computer science::UYQ Artificial intelligence::UYQV Computer vision Dynamical models of robots performing tasks in contact with objects or the environment are difficult to obtain. Therefore, different methods of learning the dynamics of tasks have been proposed. In this chapter, we present a method that provides the joint torques needed to execute a task in a compliant and at the same time accurate manner. The presented method of compliant movement primitives (CMPs), which consists of the task kinematical and dynamical trajectories, goes beyond mere reproduction of previously learned motions. Using statistical generalization, the method allows to generate new, previously untrained trajectories. Furthermore, the use of transition graphs allows us to combine parts of previously learned motions and thus generate new ones. In the chapter, we provide a brief overview of this research topic in the literature, followed by an in-depth explanation of the compliant movement primitives framework, with details on both statistical generalization and transition graphs. An extensive experimental evaluation demonstrates the applicability and the usefulness of the approach. 2021-06-02T10:07:53Z 2021-06-02T10:07:53Z 2016 chapter ONIX_20210602_10.5772/64170_264 https://library.oapen.org/handle/20.500.12657/49150 eng application/pdf n/a 51513.pdf InTechOpen 10.5772/64170 10.5772/64170 09f6769d-48ed-467d-b150-4cf2680656a1 FP7-PEOPLE-2011-IAPP 285985 open access
institution OAPEN
collection DSpace
language English
description Dynamical models of robots performing tasks in contact with objects or the environment are difficult to obtain. Therefore, different methods of learning the dynamics of tasks have been proposed. In this chapter, we present a method that provides the joint torques needed to execute a task in a compliant and at the same time accurate manner. The presented method of compliant movement primitives (CMPs), which consists of the task kinematical and dynamical trajectories, goes beyond mere reproduction of previously learned motions. Using statistical generalization, the method allows to generate new, previously untrained trajectories. Furthermore, the use of transition graphs allows us to combine parts of previously learned motions and thus generate new ones. In the chapter, we provide a brief overview of this research topic in the literature, followed by an in-depth explanation of the compliant movement primitives framework, with details on both statistical generalization and transition graphs. An extensive experimental evaluation demonstrates the applicability and the usefulness of the approach.
title 51513.pdf
spellingShingle 51513.pdf
title_short 51513.pdf
title_full 51513.pdf
title_fullStr 51513.pdf
title_full_unstemmed 51513.pdf
title_sort 51513.pdf
publisher InTechOpen
publishDate 2021
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