Sharing knowledge with robots

K. Hiraki, Y. Anzai
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引用次数: 4

Abstract

Intelligent robots need to share knowledge with human beings for flexible interaction. However, the gap between low‐level sensory data and abstract human knowledge makes it difficult to preencode robot behavior against human's various complex demands. This article presents a way of enabling robots to learn abstract concepts from sensory and perceptual data. In order to overcome the gap between the low‐level sensory data and higher level concept description, a method called feature abstraction is used. Feature abstraction dynamically defines abstract sensors from primitive sensory devices and makes it possible to learn appropriate sensory‐motor constraints. This method has been implemented on a real mobile robot as a learning system called Acorn‐II. Acorn‐II was evaluated with some empirical results and it was shown that the system can learn some abstract concepts more accurately than other existing systems.
与机器人分享知识
智能机器人需要与人类共享知识,实现灵活的交互。然而,低层次的感官数据与抽象的人类知识之间的差距使得机器人的行为难以针对人类的各种复杂需求进行预编码。本文提出了一种使机器人能够从感觉和感知数据中学习抽象概念的方法。为了克服低级感知数据与高级概念描述之间的差距,采用了一种称为特征抽象的方法。特征抽象动态地从原始感觉设备中定义抽象传感器,并使学习适当的感觉-运动约束成为可能。该方法已经在一个真实的移动机器人上实现,作为一个学习系统,称为Acorn‐II。用一些经验结果对Acorn‐II进行了评估,结果表明该系统可以比其他现有系统更准确地学习一些抽象概念。
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