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Learning to plan for robots using generalized representations

Ioannis Pisokas, Dongbing Gu, Huosheng Hu

发表年份
2006
引用次数
2

摘要

Purpose Robots operating in the real world should be able to make decisions and plan ahead their actions. We argue that learning using generalized representations of the robot's experience can assist such a ability. Design/methodology/approach We present results from our research on methods for enabling mobile robots to plan their actions using generalized representations of their experience. Such generalized representations are acquired through a learning phase during which the robot explores its environment and builds subsymbolic (connectionist) representations of the result that its actions have to its sensory perception. Then these representations are employed by the robot for autonomously determining task‐achieving sequences of actions (plans),for attaining assigned tasks. Findings Such subsymbolic mechanisms can employ generalization techniques in order to pursue plans through unexplored regions of the robot's environment. Originality/value Subsymbolic motion planning can autonomously determine task‐achieving sequences of actions in real environments, without using presupplied symbolic knowledge, but instead generating novel plans using previously acquired subsymbolic representations.

关键词

RobotConnectionismGeneralizationTask (project management)Artificial intelligencePlan (archaeology)Computer scienceOriginalityPerceptionHuman–computer interaction

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