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A Qualitative Representation of Structural Spatial Knowledge for Robot Navigation with Reinforcement Learning

Lutz Frommberger

Year
2006
Citations
4

Abstract

In robot navigation tasks, the representation of knowledge of the surrounding world plays an important role, especially in reinforcement learning approaches. This work presents a qualitative representation of space that empowers an agent to learn a goal-directed navigation strategy based on structural knowledge of the world that leads to a generally sensible navigation behavior that can be transferred to completely unknown environments. 1.

Keywords

Reinforcement learningRepresentation (politics)Artificial intelligenceComputer scienceRobotHuman–computer interactionSpace (punctuation)Knowledge representation and reasoning

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