We present a framework for automatically learning human user models from joint-action demonstrations that enables a robot to compute a robust policy for a collaborative task with a human. First, the demonstrated action sequences are clustered into different human types using an unsuper-vised learning algorithm. A reward function is then learned for each type through the employment of an inverse rein-forcement learning algorithm. The learned model is then in-corporated into a mixed-observability Markov decision pro-cess (MOMDP) formulation, wherein the human type is a partially observable variable. With this framework, we can infer online the human type of a new user that was not in-cluded in the training set, and can compute a policy for th...
Robots are increasingly introduced to work in concert with people in high-intensity do-mains, such a...
Human-robot collaboration seeks to have humans and robots closely interacting in everyday situations...
As robots become more accessible to humans, more intuitive and human-friendly ways of programming th...
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...
Designed to safely share the same workspace as humans and assist them in various tasks, the new coll...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
We consider robot learning in the context of shared autonomy, where control of the system can switch...
Human-Robot Collaboration (HRC) is a term used to describe tasks in which robots and humans work tog...
We present a robotic setup for real-world testing and evaluation of human-robot and human-human coll...
Humans can leverage physical interaction to teach robot arms. This physical interaction takes multip...
Abstract—This paper presents a collaborative reinforcement learning algorithm,)(λCQ, designed to acc...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
When two humans perform a collaborative manipulation task, they leverage an intuitive understanding ...
Robots are increasingly introduced to work in concert with people in high-intensity do-mains, such a...
Human-robot collaboration seeks to have humans and robots closely interacting in everyday situations...
As robots become more accessible to humans, more intuitive and human-friendly ways of programming th...
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...
Designed to safely share the same workspace as humans and assist them in various tasks, the new coll...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
We consider robot learning in the context of shared autonomy, where control of the system can switch...
Human-Robot Collaboration (HRC) is a term used to describe tasks in which robots and humans work tog...
We present a robotic setup for real-world testing and evaluation of human-robot and human-human coll...
Humans can leverage physical interaction to teach robot arms. This physical interaction takes multip...
Abstract—This paper presents a collaborative reinforcement learning algorithm,)(λCQ, designed to acc...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
When two humans perform a collaborative manipulation task, they leverage an intuitive understanding ...
Robots are increasingly introduced to work in concert with people in high-intensity do-mains, such a...
Human-robot collaboration seeks to have humans and robots closely interacting in everyday situations...
As robots become more accessible to humans, more intuitive and human-friendly ways of programming th...