This work focuses on generating multiple coordinated motor skills for intelligent systems and studies a Multi-Expert Synthesis (MES) approach to achieve versatile robotic skills for locomotion and manipulation. MES embeds and uses expert skills to solve new composite tasks, and is able to synthesise and coordinate different and multiple skills smoothly. We proposed essential and effective design guidelines for training successful MES policies in simulation, which were deployed on both floating- and fixed-base robots. We formulated new algorithms to systematically determine task-relevant state variables for each individual experts which improved robustness and learning efficiency, and an explicit enforcement objective to diversify skills amo...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
With advances in technology expanding the capabilities of robots, while at the same time making robo...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
This work focuses on generating multiple coordinated motor skills for intelligent systems and studie...
This work focuses on generating multiple coordinated motor skills for intelligent systems and studie...
The use of Deep Reinforcement Learning (DRL) has received significantly increased attention from re...
The central contribution of this thesis is providing a reliable framework and algorithms to make ro...
Learning diverse skills is one of the main challenges in robotics. To this end, imitation learning a...
Humans are capable of performing awe-inspiring feats of agility by drawing from a vast repertoire of...
Biological quadrupedal systems exhibit a wider range of locomotion skills. In Robotics, quadrupedal ...
Ever since the word "robot" was introduced to the English language by Karel Capek's play "Rossum's U...
A salient feature of human motor skill learning is the ability to exploitsimilarities across related...
Future robots need to autonomously acquire motor skills in order to reduce their reliance on human ...
Most manipulation tasks can be decomposed into a sequence of phases, where the robot’s actions have...
We seek to develop computational tools to reproduce the locomotion of humans and animals in complex ...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
With advances in technology expanding the capabilities of robots, while at the same time making robo...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
This work focuses on generating multiple coordinated motor skills for intelligent systems and studie...
This work focuses on generating multiple coordinated motor skills for intelligent systems and studie...
The use of Deep Reinforcement Learning (DRL) has received significantly increased attention from re...
The central contribution of this thesis is providing a reliable framework and algorithms to make ro...
Learning diverse skills is one of the main challenges in robotics. To this end, imitation learning a...
Humans are capable of performing awe-inspiring feats of agility by drawing from a vast repertoire of...
Biological quadrupedal systems exhibit a wider range of locomotion skills. In Robotics, quadrupedal ...
Ever since the word "robot" was introduced to the English language by Karel Capek's play "Rossum's U...
A salient feature of human motor skill learning is the ability to exploitsimilarities across related...
Future robots need to autonomously acquire motor skills in order to reduce their reliance on human ...
Most manipulation tasks can be decomposed into a sequence of phases, where the robot’s actions have...
We seek to develop computational tools to reproduce the locomotion of humans and animals in complex ...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
With advances in technology expanding the capabilities of robots, while at the same time making robo...
This paper presents a control framework that combines model-based optimal control and reinforcement ...