International audienceWithin the context of learning sequences of basic tasks to build a complex behavior, a method is proposed which uses a hierarchical set of incrementally learning agents. Each one has to respect a particular perceptive constraint. To do so, an agent must choose either to execute basic tasks or to call another agent in order to use its decision-making competences, according to its perception. The learning procedure of each agent is achieved by a reinforcement learning inspired algorithm based on an heuristic which does not need internal parameters. A validation of the method is given, using a simulated Khepera robot. A hierarchical set of 4 agents is created. Each one is dedicated to the exploitation of particular percep...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
International audienceMulti-task learning by robots poses the challenge of the domain knowledge: com...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
International audienceWithin the context of learning sequences of basic tasks to build a complex beh...
National audienceWithin the contest of learning sequences of basic tasks to build a complex behavior...
International audienceWithin this paper, a new kind of learning agents - so-called Constraint based ...
While autonomous mobile robots used to be built for domain specific tasks in factories or similar sa...
We describe an autonomous mobile robot that employs a simple sensorimotor learning algorithm at thre...
Abstract. We describe an autonomous mobile robot that employs a simple sensorimotor learning algorít...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
This paper presents an Omnidirectional Vision Agent able to learn to navigate a mobile robot in its ...
Abstract. For complex tasks, such as manipulation and robot navi-gation, reinforcement learning (RL)...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
Initial results of an ongoing research in the field of reactive mobile autonomy are presented. The a...
This thesis addresses the issue of modeling the agent navigation in a benign environment by using re...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
International audienceMulti-task learning by robots poses the challenge of the domain knowledge: com...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
International audienceWithin the context of learning sequences of basic tasks to build a complex beh...
National audienceWithin the contest of learning sequences of basic tasks to build a complex behavior...
International audienceWithin this paper, a new kind of learning agents - so-called Constraint based ...
While autonomous mobile robots used to be built for domain specific tasks in factories or similar sa...
We describe an autonomous mobile robot that employs a simple sensorimotor learning algorithm at thre...
Abstract. We describe an autonomous mobile robot that employs a simple sensorimotor learning algorít...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
This paper presents an Omnidirectional Vision Agent able to learn to navigate a mobile robot in its ...
Abstract. For complex tasks, such as manipulation and robot navi-gation, reinforcement learning (RL)...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
Initial results of an ongoing research in the field of reactive mobile autonomy are presented. The a...
This thesis addresses the issue of modeling the agent navigation in a benign environment by using re...
In this work new artificial learning and innate control mechanisms are proposed for application in a...
International audienceMulti-task learning by robots poses the challenge of the domain knowledge: com...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...