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Towards the grounding of abstract words: A Neural Network model for cognitive robots

机译:朝向抽象词的接地:认知机器人的神经网络模型

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In this paper, a model based on Artificial Neural Networks (ANNs) extends the symbol grounding mechanism to abstract words for cognitive robots. The aim of this work is to obtain a semantic representation of abstract concepts through the grounding in sensorimotor experiences for a humanoid robotic platform. Simulation experiments have been developed on a software environment for the iCub robot. Words that express general actions with a sensorimotor component are first taught to the simulated robot. During the training stage the robot first learns to perform a set of basic action primitives through the mechanism of direct grounding. Subsequently, the grounding of action primitives, acquired via direct sensorimotor experience, is transferred to higher-order words via linguistic descriptions. The idea is that by combining words grounded in sensorimotor experience the simulated robot can acquire more abstract concepts. The experiments aim to teach the robot the meaning of abstract words by making it experience sensorimotor actions. The iCub humanoid robot will be used for testing experiments on a real robotic architecture.
机译:本文,基于人工神经网络(ANNS)的模型将符号接地机构延伸到认知机器人的抽象词。这项工作的目的是通过在人形机器人平台的Sensorimotor经验中实现抽象概念的语义表示。已经在ICUB机器人的软件环境中开发了仿真实验。首先向模拟机器人提交与SensionImotor组件的一般动作的单词。在培训阶段,机器人首先学会通过直接接地的机制来执行一组基本动作原语。随后,通过直接传感器经验获取的动作基元接地,通过语言描述转移到更高阶的单词。这个想法是,通过将Sensorimotor经验的基准组合结合,模拟机器人可以获取更抽象的概念。实验旨在通过使Sensimotor动作进行抽象单词的意义来教导机器人。 ICUB人形机器人将用于测试真正的机器人架构的实验。

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