In order to allow humans and robots to work closely together and as a team, we need to equip robots not only with a general understanding of joint action, but also with an understanding of the idiosyncratic differences in the ways humans perform certain tasks. This will allow robots to be better colleagues, by anticipating an individual's actions, and acting accordingly. In this paper, we present a way of encoding a human's course of action as a probabilistic sequence of qualitative states, and show that such a model can be employed to identify individual humans from their respective course of action, even when accomplishing the very same goal state. We conclude from our findings that there are significant variations in the ways humans acco...
Inferring human operators' actions in shared collaborative tasks, plays a crucial role in enhancing ...
Human-robot collaboration is migrating from lightweight robots in laboratory environments to industr...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
In this chapter we present results of our ongoing research on efficient and fluent human-robot colla...
In human-robot teaming, one of the crucial keys for the team’s success is that the robot and human t...
As robot capabilities increase, the complexity of controlling and manipulating them becomes complex ...
University of Technology, Sydney. Faculty of Engineering and Information Technology.This thesis expl...
New industrial robotic systems that operate in the same physical space as people highlight the emerg...
We present a framework for automatically learning human user models from joint-action demonstrations...
In the future, robots will become our companions and co-workers. They will gradually appear in our e...
In this paper we present a model for action preparation and decision making in cooperative tasks tha...
There is a strong demand for robots to work in environments, such as aircraft manufacturing, where t...
Robots are becoming increasingly weaved into the fabric of our society, from self-driving cars on ou...
Abstract. When robots work alongside humans for performing collab-orative tasks, they need to be abl...
Inferring human operators' actions in shared collaborative tasks, plays a crucial role in enhancing ...
Human-robot collaboration is migrating from lightweight robots in laboratory environments to industr...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...
Human and robot partners increasingly need to work together to perform tasks as a team. Robots desig...
In this chapter we present results of our ongoing research on efficient and fluent human-robot colla...
In human-robot teaming, one of the crucial keys for the team’s success is that the robot and human t...
As robot capabilities increase, the complexity of controlling and manipulating them becomes complex ...
University of Technology, Sydney. Faculty of Engineering and Information Technology.This thesis expl...
New industrial robotic systems that operate in the same physical space as people highlight the emerg...
We present a framework for automatically learning human user models from joint-action demonstrations...
In the future, robots will become our companions and co-workers. They will gradually appear in our e...
In this paper we present a model for action preparation and decision making in cooperative tasks tha...
There is a strong demand for robots to work in environments, such as aircraft manufacturing, where t...
Robots are becoming increasingly weaved into the fabric of our society, from self-driving cars on ou...
Abstract. When robots work alongside humans for performing collab-orative tasks, they need to be abl...
Inferring human operators' actions in shared collaborative tasks, plays a crucial role in enhancing ...
Human-robot collaboration is migrating from lightweight robots in laboratory environments to industr...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...