Humans as well as humanoid robots can use a large number of degrees of freedom to solve very complex motor tasks. The high-dimensionality of these motor tasks adds difficulties to the control problem and machine learning algorithms. However, it is well known that the intrinsic dimensionality of many human movements is small in comparison to the number of employed DoFs, and hence, the movements can be represented by a small number of synergies encoding the couplings between DoFs. In this paper, we want to apply Dimensionality Reduction (DR) to a recent movement representation used in robotics, called Probabilistic Movement Primitives (ProMP). While ProMP have been shown to have many benefits, they suffer with the high-dimensionality of a rob...
Abstract — Physical interaction in robotics is a complex prob-lem that requires not only accurate re...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Movement Primitives (MP) are a well-established approach for representing mod-ular and re-usable rob...
Humans as well as humanoid robots can use a large number of degrees of freedom to solve very complex...
Abstract — Humans as well as humanoid robots can use a large number of degrees of freedom to solve v...
Often we have to handle high dimensional spaces if we want to learn motor skills for robots. In poli...
Dynamic movement primitives (DMPs) are widely used as movement parametrization for learning robot tr...
Abstract — Reinforcement learning in the high-dimensional, continuous spaces typical in robotics, re...
Movement primitives are a well established approach for encoding and executing movements. While the ...
In this paper we present a new methodology for robot learning that combines ideas from statistical g...
Dynamic Movement Primitives (DMP) are nowadays widely used as movement parametrization for learning ...
Synthesising motion of human character animations or humanoid robots is vastly complicated by the la...
Synthesising motion of human character animations or humanoid robots is vastly complicated by the la...
Abstract — Dynamic Movement Primitives (DMP) are nowa-days widely used as movement parametrization f...
Movement Primitives are a well-established paradigm for modular movement representation and generati...
Abstract — Physical interaction in robotics is a complex prob-lem that requires not only accurate re...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Movement Primitives (MP) are a well-established approach for representing mod-ular and re-usable rob...
Humans as well as humanoid robots can use a large number of degrees of freedom to solve very complex...
Abstract — Humans as well as humanoid robots can use a large number of degrees of freedom to solve v...
Often we have to handle high dimensional spaces if we want to learn motor skills for robots. In poli...
Dynamic movement primitives (DMPs) are widely used as movement parametrization for learning robot tr...
Abstract — Reinforcement learning in the high-dimensional, continuous spaces typical in robotics, re...
Movement primitives are a well established approach for encoding and executing movements. While the ...
In this paper we present a new methodology for robot learning that combines ideas from statistical g...
Dynamic Movement Primitives (DMP) are nowadays widely used as movement parametrization for learning ...
Synthesising motion of human character animations or humanoid robots is vastly complicated by the la...
Synthesising motion of human character animations or humanoid robots is vastly complicated by the la...
Abstract — Dynamic Movement Primitives (DMP) are nowa-days widely used as movement parametrization f...
Movement Primitives are a well-established paradigm for modular movement representation and generati...
Abstract — Physical interaction in robotics is a complex prob-lem that requires not only accurate re...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Movement Primitives (MP) are a well-established approach for representing mod-ular and re-usable rob...