GRAIL: A Goal-Discovering Robotic Architecture for Intrinsically-Motivated Learning

In this paper, we present goal-discovering robotic architecture for intrisically-motivated learning (GRAIL), a four-level architecture that is able to autonomously: 1) discover changes in the environment; 2) form representations of the goals corresponding to those changes; 3) select the goal to purs...

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Veröffentlicht in:IEEE transactions on cognitive and developmental systems 2016-09, Vol.8 (3), p.214-231
Hauptverfasser: Santucci, Vieri Giuliano, Baldassarre, Gianluca, Mirolli, Marco
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Sprache:eng
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Zusammenfassung:In this paper, we present goal-discovering robotic architecture for intrisically-motivated learning (GRAIL), a four-level architecture that is able to autonomously: 1) discover changes in the environment; 2) form representations of the goals corresponding to those changes; 3) select the goal to pursue on the basis of intrinsic motivations (IMs); 4) select suitable computational resources to achieve the selected goal; 5) monitor the achievement of the selected goal; and 6) self-generate a learning signal when the selected goal is successfully achieved. Building on previous research, GRAIL exploits the power of goals and competence-based IMs to autonomously explore the world and learn different skills that allow the robot to modify the environment. To highlight the features of GRAIL, we implement it in a simulated iCub robot and test the system in four different experimental scenarios where the agent has to perform reaching tasks within a 3-D environment.
ISSN:2379-8920
2379-8939
DOI:10.1109/TCDS.2016.2538961