In robotics, controllers make the robot solve a task within a specific context. The context can describe the objectives of the robot or physical properties of the environment and is always specified before task execution. To generalize the controller to multiple contexts, we follow a hierarchical approach for policy learning: A lower-level policy controls the robot for a given context and an upper-level policy generalizes among contexts. Current approaches for learning such upper-level policies are based on model-free policy search, which require an excessive number of interactions of the robot with its environment. More data-efficient policy search approaches are model based but, thus far, without the capability of learning hierarchica...
International audienceMany machine learning approaches in robotics, based on re- inforcement learnin...
Many motor skills in humanoid robotics can be learned using parametrized motor primitives. While suc...
Abstract. Many machine learning approaches in robotics, based on re-inforcement learning, inverse op...
© 2014 Elsevier B.V.In robotics, lower-level controllers are typically used to make the robot solve ...
In robotics, controllers make the robot solve a task within a specific context. The context can desc...
We consider the problem of learning skills that are versatilely applicable. One popular approach for...
Most policy search algorithms require thousands of training episodes to find an effective policy, wh...
Most policy search (PS) algorithms require thousands of training episodes to find an effective polic...
The thesis studies building blocks for robot skill learning. Using these key components, learning fr...
General autonomy is at the forefront of robotic research and practice. Earlier research has enabled ...
Direct policy search has been successful in learning challenging real world robotic motor skills by ...
Policy learning which allows autonomous robots to adapt to novel situations has been a long standing...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Policy search is a subfield in reinforcement learning which focuses on finding good parameters for ...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
International audienceMany machine learning approaches in robotics, based on re- inforcement learnin...
Many motor skills in humanoid robotics can be learned using parametrized motor primitives. While suc...
Abstract. Many machine learning approaches in robotics, based on re-inforcement learning, inverse op...
© 2014 Elsevier B.V.In robotics, lower-level controllers are typically used to make the robot solve ...
In robotics, controllers make the robot solve a task within a specific context. The context can desc...
We consider the problem of learning skills that are versatilely applicable. One popular approach for...
Most policy search algorithms require thousands of training episodes to find an effective policy, wh...
Most policy search (PS) algorithms require thousands of training episodes to find an effective polic...
The thesis studies building blocks for robot skill learning. Using these key components, learning fr...
General autonomy is at the forefront of robotic research and practice. Earlier research has enabled ...
Direct policy search has been successful in learning challenging real world robotic motor skills by ...
Policy learning which allows autonomous robots to adapt to novel situations has been a long standing...
Abstract — Learning policies that generalize across multiple tasks is an important and challenging r...
Policy search is a subfield in reinforcement learning which focuses on finding good parameters for ...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
International audienceMany machine learning approaches in robotics, based on re- inforcement learnin...
Many motor skills in humanoid robotics can be learned using parametrized motor primitives. While suc...
Abstract. Many machine learning approaches in robotics, based on re-inforcement learning, inverse op...