基于多时间尺度动态神经网络的机器人组成和上下文通信研究

Gibeom Park, J. Tani
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引用次数: 4

摘要

本文介绍了通过学习习得与人类复杂交流技能的神经机器人实验。利用具有多时间尺度动力学特性的动态神经网络模型作为控制仿人机器人的神经元模型。在实验任务中,人形机器人被训练生成特定的顺序运动模式,以响应人类受试者所展示的各种命令式手势模式序列,并遵循预定义的组合语义规则。实验结果表明:(1)MTRNN可以在更高的认知层次上学习提取具有泛化特征的组合语义规则;(2)在不提供明确指示任务分割点的线索的情况下,MTRNN可以进一步发展高阶认知能力,以控制位于正在进行的任务序列的内部上下文过程。通过学习对MTRNN动态特性的分析表明,上述认知机制是通过利用多时间尺度特性的约束和网络结构的拓扑连通性来建立适当的功能层次来实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of compositional and contextual communication of robots by using the multiple timescales dynamic neural network
The current paper introduces neurorobotics experiment on acquisition of complex communicative skills with human via learning. A dynamic neural network model which is characterized by its multiple timescale dynamics characteristics was utilized as a neuronal model for controlling a humanoid robot. In the experimental task, the humanoid robot was trained to generate specific sequential movement patterns as responding to various sequences of imperative gesture patterns demonstrated by the human subjects by following predefined compositional semantic rules. The experimental results showed that (1) the MTRNN can learn to extract compositional semantic rules with generalization in the higher cognitive level, (2) the MTRNN can develop further higher-order cognition capability for controlling the internal contextual processes as situated to on-going task sequences without being provided with cues for explicitly indicating task segmentation points. The analysis on the dynamic characteristics developed in the MTRNN through learning indicated that the aforementioned cognitive mechanisms were achieved by developing adequate functional hierarchy by utilizing the constraint of the multiple timescale property and the topological connectivity imposed on the network configuration.
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