We investigate learning of flexible Robot locomotion controller, i.e., the controllers should be applicable for multiple contexts, for example different walking speeds, various slopes of the terrain or other physical properties of the robot. In our experiments, contexts are desired walking linear speed and the direction of the gait. Current approaches for learning control parameters of biped locomotion controllers are typically only applicable for a single context. They can be used for a particular context, for example to learn a gait with highest speed, lowest energy consumption or a combination of both. The question of our research is, how can we obtain a flexible walking controller that controls the robot (near) optimally for many differ...
Policy search methods can in principle learn controllers for a wide range of locomotion tasks automa...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
In this work, reinforcement learning techniques are implemented and compared to address biped locomo...
We investigate learning of flexible robot locomotion controllers, i.e., the controllers should be ap...
In robotics, controllers make the robot solve a task within a specific context. The context can des...
We investigate the learning of a flexible humanoid robot kick controller, i.e., the controller shoul...
© 2014 Elsevier B.V.In robotics, lower-level controllers are typically used to make the robot solve ...
Pure reinforcement learning does not scale well to domains with many degrees of freedom and particul...
<p>Walking is a core task for humanoid robots. Most existing walking controllers fall into one of tw...
Abstract—Reinforcement learning and policy search methods can in principle solve a wide range of con...
Reinforcement learning is a powerful tool to derive controllers for systems where no models are avai...
This paper describes a learning framework for a central pattern generator based biped locomotion con...
General autonomy is at the forefront of robotic research and practice. Earlier research has enabled ...
Robots hold the promise of becoming useful helpers for many dangerous, laborious, or unpleasant task...
In robotics, controllers make the robot solve a task within a specific context. The context can desc...
Policy search methods can in principle learn controllers for a wide range of locomotion tasks automa...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
In this work, reinforcement learning techniques are implemented and compared to address biped locomo...
We investigate learning of flexible robot locomotion controllers, i.e., the controllers should be ap...
In robotics, controllers make the robot solve a task within a specific context. The context can des...
We investigate the learning of a flexible humanoid robot kick controller, i.e., the controller shoul...
© 2014 Elsevier B.V.In robotics, lower-level controllers are typically used to make the robot solve ...
Pure reinforcement learning does not scale well to domains with many degrees of freedom and particul...
<p>Walking is a core task for humanoid robots. Most existing walking controllers fall into one of tw...
Abstract—Reinforcement learning and policy search methods can in principle solve a wide range of con...
Reinforcement learning is a powerful tool to derive controllers for systems where no models are avai...
This paper describes a learning framework for a central pattern generator based biped locomotion con...
General autonomy is at the forefront of robotic research and practice. Earlier research has enabled ...
Robots hold the promise of becoming useful helpers for many dangerous, laborious, or unpleasant task...
In robotics, controllers make the robot solve a task within a specific context. The context can desc...
Policy search methods can in principle learn controllers for a wide range of locomotion tasks automa...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
In this work, reinforcement learning techniques are implemented and compared to address biped locomo...