This thesis presents new approaches toward efficient and intuitive high-level plan learning for cooperative robots. More specifically this work study Learning from Demonstration algorithm for relational domains. Using relational representation to model the world, simplify representing concurrentand cooperative behavior.We have first developed and studied the first algorithm for Inverse ReinforcementLearning in relational domains. We have then presented how one can use the RAP formalism to represent Cooperative Tasks involving a robot and a human operator. RAP is an extension of the Relational MDP framework that allows modeling concurrent activities. Using RAP allow us to represent both the human and the robot in the same process but also to...
The development of mechanisms that enable robot teams to autonomously generate cooperative behaviour...
This paper introduces a general formulation of relational behaviours for cooperative real robots and...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...
This thesis presents new approaches toward efficient and intuitive high-level plan learning for coop...
Cette thèse présente de nouvelles approches permettant l’apprentissage efficace et intuitif de plans...
International audienceIn human-robot collaboration, multi-agent domains , or single-robot manipulati...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...
Abstract. Reinforcement learning has been widely applied to solve a diverse set of learning tasks, f...
This research project is an effort towards achieving robot cooperation to complete a set of tasks. T...
Abstract—The joint attention is an important cognitive function that human beings learn in childhood...
This report introduces a general formulation of relational behaviours for cooperative real robots an...
Human-centric and flexible interaction in collaborative robotics is a key aspect of industry 4.0/5.0...
This report introduces a general formulation of relational behaviours for cooperative real robots an...
We present a framework for automatically learning human user models from joint-action demonstrations...
In this paper we tackle motion planning in industrial human-robot cooperative scenarios modeled as a...
The development of mechanisms that enable robot teams to autonomously generate cooperative behaviour...
This paper introduces a general formulation of relational behaviours for cooperative real robots and...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...
This thesis presents new approaches toward efficient and intuitive high-level plan learning for coop...
Cette thèse présente de nouvelles approches permettant l’apprentissage efficace et intuitif de plans...
International audienceIn human-robot collaboration, multi-agent domains , or single-robot manipulati...
Reinforcement learning has been widely applied to solve a diverse set of learning tasks, from board ...
Abstract. Reinforcement learning has been widely applied to solve a diverse set of learning tasks, f...
This research project is an effort towards achieving robot cooperation to complete a set of tasks. T...
Abstract—The joint attention is an important cognitive function that human beings learn in childhood...
This report introduces a general formulation of relational behaviours for cooperative real robots an...
Human-centric and flexible interaction in collaborative robotics is a key aspect of industry 4.0/5.0...
This report introduces a general formulation of relational behaviours for cooperative real robots an...
We present a framework for automatically learning human user models from joint-action demonstrations...
In this paper we tackle motion planning in industrial human-robot cooperative scenarios modeled as a...
The development of mechanisms that enable robot teams to autonomously generate cooperative behaviour...
This paper introduces a general formulation of relational behaviours for cooperative real robots and...
Abstract—We present a framework for learning human user models from joint-action demonstrations that...