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Motion Adaptation Based on Learning the Manifold of Task and Dynamic Movement Primitive Parameters
by
Bar-Shira, Or
, Cohen, Yosef
, Berman, Sigal
in
Adaptation
/ Artificial neural networks
/ Kernels
/ Machine learning
/ Manifolds (mathematics)
/ Movement
/ Parameters
/ Principal components analysis
/ Teaching methods
/ Throwing
2021
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Motion Adaptation Based on Learning the Manifold of Task and Dynamic Movement Primitive Parameters
by
Bar-Shira, Or
, Cohen, Yosef
, Berman, Sigal
in
Adaptation
/ Artificial neural networks
/ Kernels
/ Machine learning
/ Manifolds (mathematics)
/ Movement
/ Parameters
/ Principal components analysis
/ Teaching methods
/ Throwing
2021
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Do you wish to request the book?
Motion Adaptation Based on Learning the Manifold of Task and Dynamic Movement Primitive Parameters
by
Bar-Shira, Or
, Cohen, Yosef
, Berman, Sigal
in
Adaptation
/ Artificial neural networks
/ Kernels
/ Machine learning
/ Manifolds (mathematics)
/ Movement
/ Parameters
/ Principal components analysis
/ Teaching methods
/ Throwing
2021
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Motion Adaptation Based on Learning the Manifold of Task and Dynamic Movement Primitive Parameters
Journal Article
Motion Adaptation Based on Learning the Manifold of Task and Dynamic Movement Primitive Parameters
2021
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Overview
Dynamic movement primitives (DMP) are motion building blocks suitable for real-world tasks. We suggest a methodology for learning the manifold of task and DMP parameters, which facilitates runtime adaptation to changes in task requirements while ensuring predictable and robust performance. For efficient learning, the parameter space is analyzed using principal component analysis and locally linear embedding. Two manifold learning methods: kernel estimation and deep neural networks, are investigated for a ball throwing task in simulation and in a physical environment. Low runtime estimation errors are obtained for both learning methods, with an advantage to kernel estimation when data sets are small.
Publisher
Cambridge University Press
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