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Becoming incrementally reactive: on-line learning of an evolving decision tree array for robot navigation

机译:成为渐进式反应性:在线学习不断发展的决策树阵列以进行机器人导航

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This paper proposes a novel hierarchical multi-layer decision tree for representing reactive robot navigation knowledge. In this representation, the perception space is decomposed into a hierarchical set of worlds reflecting environments which are homogeneous in nature and which vary in complexity in an ordered mannet Each world is used to produce a corresponding decision tree which is trained incrementally. The instantaneous perception of the robot is used to select an appropriate rule from the decision tree and a sequence of rule activations form the complete trajectory. The ability to keep the knowledge complexity manageable and under control is an important aspect of the technique.
机译:本文提出了一种新颖的分层多层决策树,用于表示反应式机器人导航知识。在这种表示中,感知空间被分解成一组层次的世界,反映了自然环境中的环境,这些环境本质上是同质的,并且在有序的“手榴弹”中复杂度各不相同。每个世界都用于生成相应的决策树,并逐步对其进行训练。机器人的即时感知可用于从决策树中选择适当的规则,并且一系列规则激活会形成完整的轨迹。使知识复杂性易于管理和控制的能力是该技术的重要方面。

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