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Learning a DFT-based sequence with reinforcement learning: a NAO implementation

Boris Durán, Gauss Lee, Robert Lowe

Year
2012
Citations
2
Access
Open access

Abstract

Abstract The implementation of sequence learning in robotic platforms offers several challenges. Deciding when to stop one action and continue to the next requires a balance between stability of sensory information and, of course, the knowledge about what action is required next. The work presented here proposes a starting point for the successful execution and learning of dynamic sequences. Making use of the NAO humanoid platform we propose a mathematical model based on dynamic field theory and reinforcement learning methods for obtaining and performing a sequence of elementary motor behaviors. Results from the comparison of two reinforcement learning methods applied to sequence generation, for both simulation and implementation, are provided.

Keywords

Reinforcement learningSequence (biology)Computer scienceHumanoid robotSequence learningArtificial intelligenceField (mathematics)Stability (learning theory)Action (physics)Human–computer interaction

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