We propose a developmental approach that allows a robot to interpret and describe the actions of human agents by reusing previous experience. The robot first learns the association between words and object affordances by manipulating the objects in its environment. It then uses this information to learn a mapping between its own actions and those performed by a human in a shared environment. It finally fuses the information from these two models to interpret and describe human actions in light of its own experience. In our experiments, we show that the model can be used flexibly to do inference on different aspects of the scene. We can predict the effects of an action on the basis of object properties. We can revise the belief that a certai...
This thesis builds on the observation that robots, like humans, do not have enough experience to han...
This thesis builds on the observation that robots, like humans, do not have enough experience to han...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
We propose a developmental approach that allows a robot to interpret and describe the actions of hum...
In the future, robots will support humans in their every day activities. One particular challenge th...
In the future, robots will support humans in their every day activities. One particular challenge th...
Robots that operate in human environments can learn motor skills asocially, from self-exploration, o...
We propose a developmental framework that enables the robot to learn affordances through interaction...
Abstract—Inspired by the extraordinary ability of young infants to learn how to grasp and manipulate...
The concept of object affordances describes the possible ways whereby an agent (either biological or...
Being able to imagine interactions with objects enables humans to intelligently interact with previo...
Abstract—This paper describes a developmental framework for action-driven perception in anthropomorp...
International audienceRobots are known for the uncanny feelings they trigger in humans. Though they ...
Abstract — Within the field of Neuro Robotics we are driven primarily by the desire to understand ho...
Abstract—The notion of affordances that was proposed by J.J. Gibson, refers to the action possibilit...
This thesis builds on the observation that robots, like humans, do not have enough experience to han...
This thesis builds on the observation that robots, like humans, do not have enough experience to han...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
We propose a developmental approach that allows a robot to interpret and describe the actions of hum...
In the future, robots will support humans in their every day activities. One particular challenge th...
In the future, robots will support humans in their every day activities. One particular challenge th...
Robots that operate in human environments can learn motor skills asocially, from self-exploration, o...
We propose a developmental framework that enables the robot to learn affordances through interaction...
Abstract—Inspired by the extraordinary ability of young infants to learn how to grasp and manipulate...
The concept of object affordances describes the possible ways whereby an agent (either biological or...
Being able to imagine interactions with objects enables humans to intelligently interact with previo...
Abstract—This paper describes a developmental framework for action-driven perception in anthropomorp...
International audienceRobots are known for the uncanny feelings they trigger in humans. Though they ...
Abstract — Within the field of Neuro Robotics we are driven primarily by the desire to understand ho...
Abstract—The notion of affordances that was proposed by J.J. Gibson, refers to the action possibilit...
This thesis builds on the observation that robots, like humans, do not have enough experience to han...
This thesis builds on the observation that robots, like humans, do not have enough experience to han...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...