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Learning of composite actions and visual categories via grounded linguistic instructions: Humanoid robot simulations

机译:通过扎实的语言指导学习复合动作和视觉类别:人形机器人模拟

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摘要

This paper presents a cognitive learning system for robot recognition and composite action learning. The cognitive system of the robot is an artificial neural network trained to recognize and handle objects through imitation and back-propagation algorithm learning. The robot is first trained to learn the representation of action words, object categories and grounded language understanding. Following a human tutor's linguistic instructions, the robot autonomously transfers the grounding form directly basics knowledge to new higher level composite knowledge.
机译:本文提出了一种用于机器人识别和复合动作学习的认知学习系统。机器人的认知系统是一个人工神经网络,经过训练可以通过模仿和反向传播算法学习来识别和处理对象。首先要对机器人进行培训,以学习动作词的表示形式,对象类别和扎实的语言理解能力。遵循人类导师的语言指令,该机器人自动将接地形式的基础知识直接转换为新的更高层次的复合知识。

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