Service robots have the potential to be of great value in households, health care and other labor intensive environments. However, these environments are typically unique, not very structured and frequently changing, which makes it difficult to make service robots robust and versatile through manual programming. Having robots learn to solve tasks autonomously through interaction with the real world forms an attractive alternative. With Reinforcement Learning (RL), a system can learn to perform tasks by receiving only coarse feedback on its actions: desired behavior is reinforced by positive rewards, undesired behavior is punished by negative rewards. In this research, a bipedal walking robot named Leo was designed and built specifically to ...
The identification of learning mechanisms for locomotion has been the subject of much researchfor so...
This thesis presents a study of biped dynamic walking using reinforcement learning. A hardware biped...
Reinforcement learning (RL) provide a potentially powerful framework for designing control strategie...
The Delft Biorobotics Laboratory develops bipedal humanoid robots. One of these robots, called LEO, ...
Abstract—This paper investigates the learning of a controller for a flat-footed bipedal robot using ...
Legged robots have been researched for more than half a century. However, commercially only a handfu...
State-of-the-art reinforcement learning is now able to learn versatile locomotion, balancing and pus...
We present a new reinforcement learning system more suitable to be used in robotics than existing on...
By learning to walk, robots should be able to traverse many types of terrains. An important learning...
AbstractThis paper demonstrates application of Reinforcement Learning to optimization of control of ...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
The increment of dependant people for the realization of Activities of Daily Living is a fact that c...
18 pages, 16 figures, 3 tables, 6 pseudocodes/algorithms, video at https://youtu.be/IqtyHFrb3BUInter...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
Programming robots for performing different activities requires calculating sequences of values of t...
The identification of learning mechanisms for locomotion has been the subject of much researchfor so...
This thesis presents a study of biped dynamic walking using reinforcement learning. A hardware biped...
Reinforcement learning (RL) provide a potentially powerful framework for designing control strategie...
The Delft Biorobotics Laboratory develops bipedal humanoid robots. One of these robots, called LEO, ...
Abstract—This paper investigates the learning of a controller for a flat-footed bipedal robot using ...
Legged robots have been researched for more than half a century. However, commercially only a handfu...
State-of-the-art reinforcement learning is now able to learn versatile locomotion, balancing and pus...
We present a new reinforcement learning system more suitable to be used in robotics than existing on...
By learning to walk, robots should be able to traverse many types of terrains. An important learning...
AbstractThis paper demonstrates application of Reinforcement Learning to optimization of control of ...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
The increment of dependant people for the realization of Activities of Daily Living is a fact that c...
18 pages, 16 figures, 3 tables, 6 pseudocodes/algorithms, video at https://youtu.be/IqtyHFrb3BUInter...
Bipedal walking is a challenging task for humanoid robots. In this study, we develop a lightweight r...
Programming robots for performing different activities requires calculating sequences of values of t...
The identification of learning mechanisms for locomotion has been the subject of much researchfor so...
This thesis presents a study of biped dynamic walking using reinforcement learning. A hardware biped...
Reinforcement learning (RL) provide a potentially powerful framework for designing control strategie...