Title :
Learning Generalizable Control Programs
Author :
Hart, Stephen ; Grupen, Roderic
Author_Institution :
Italian Inst. of Technol., Genoa, Italy
Abstract :
In this paper, we present a framework for guiding autonomous learning in robot systems. The paradigm we introduce allows a robot to acquire new skills according to an intrinsic motivation function that finds behavioral affordances. Affordances-in the sense of (Gibson, Toward and Ecological Psychology, Hillsdale, NJ, 1977)-describe the latent possibilities for action in the environment and provide a direct means of organizing functional knowledge in embodied systems. We begin by showing how a robot can assemble closed-loop action primitives from its sensory and motor resources, and then show how these primitives can be sequenced into multi-objective policies. We then show how these policies can be assembled hierarchically to support incremental and cumulative learning. The main contribution of this paper demonstrates how the proposed intrinsic motivator for affordance discovery can cause a robot to both acquire such hierarchical policies using reinforcement learning and then to generalize these policies to new contexts. As the framework is described, its effectiveness and applicability is demonstrated through a longitudinal learning experiment on a bimanual robot.
Keywords :
closed loop systems; dexterous manipulators; learning (artificial intelligence); autonomous learning; bimanual robot; closed-loop action assembling; cumulative learning; embodied systems; functional knowledge organization; generalizable control program learning; incremental learning; intrinsic motivation function; longitudinal learning; multiobjective policies; reinforcement learning; Context; Kinematics; Manipulators; Navigation; Robot kinematics; Robot sensing systems; Cognitive architectures; generalization; incremental learning; intrinsic motivation; reinforcement learning; schema;
Journal_Title :
Autonomous Mental Development, IEEE Transactions on
DOI :
10.1109/TAMD.2010.2103311