Applying Deep Reinforcement Learning (DRL) to Human-Robot Cooperation (HRC) in dynamic control problems is promising yet challenging as the robot needs to learn the dynamics of the controlled system and dynamics of the human partner. In existing research, the robot powered by DRL adopts coupled observation of the environment and the human partner to learn both dynamics simultaneously. However, such a learning strategy is limited in terms of learning efficiency and team performance. This work proposes a novel task decomposition method with a hierarchical reward mechanism that enables the robot to learn the hierarchical dynamic control task separately from learning the human partner's behavior. The method is validated with a hierarchical cont...
The current reward learning from human preferences could be used to resolve complex reinforcement le...
While reinforcement learning has led to promising results in robotics, defining an informative rewar...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
We present a robotic setup for real-world testing and evaluation of human-robot and human-human coll...
This paper aims at proposing a general framework of shared control for human-robot interaction. Huma...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Abstract—This paper presents a collaborative reinforcement learning algorithm,)(λCQ, designed to acc...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Recent successes combine reinforcement learning algorithms and deep neural networks, despite reinfor...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...
We present a framework for automatically learning human user models from joint-action demonstrations...
The basis of this work is a control architecture for collaborative multi-robot systems focusing on t...
Human-in-the-loop robot control systems naturally provide the means for synergistic human-robot col...
The current reward learning from human preferences could be used to resolve complex reinforcement le...
While reinforcement learning has led to promising results in robotics, defining an informative rewar...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...
We present a robotic setup for real-world testing and evaluation of human-robot and human-human coll...
This paper aims at proposing a general framework of shared control for human-robot interaction. Huma...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Abstract—This paper presents a collaborative reinforcement learning algorithm,)(λCQ, designed to acc...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Recent successes combine reinforcement learning algorithms and deep neural networks, despite reinfor...
Robots are on the verge of becoming ubiquitous. In the form of affordable humanoid toy robots, auton...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...
We present a framework for automatically learning human user models from joint-action demonstrations...
The basis of this work is a control architecture for collaborative multi-robot systems focusing on t...
Human-in-the-loop robot control systems naturally provide the means for synergistic human-robot col...
The current reward learning from human preferences could be used to resolve complex reinforcement le...
While reinforcement learning has led to promising results in robotics, defining an informative rewar...
AbstractWhile Reinforcement Learning (RL) is not traditionally designed for interactive supervisory ...