Human-Robot Interaction System with Quantum-Inspired Bidirectional Associative Memory

Naoki Masuyama, C. Loo, N. Kubota
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Abstract

This paper discussed the Interaction System with Robot Partner using Quantum-Inspired Bi-directional Associative Memory (QBAM). We have been developed QBAM which has the superior Memory Capacity and Recall Reliability compare with conventional models. Due to these advantages, the proposed system can be stored much information and its relationships. Using QBAM, we construct the interaction system that can be associated with gesture, object and voice information. In proposed system, Steady-state genetic algorithms are applied in order to detect objects via image processing. Spiking neural networks are applied to memorize the spatio-temporal patterns of gesture. For voice recognition, we use Julius that is open source large vocabulary continuous speech recognition engine. The results of experiment shows that proposed system is able to contribute for the facilitation of communication with Robot Partner.
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基于量子启发双向联想记忆的人机交互系统
本文讨论了基于量子启发的双向联想记忆(QBAM)与机器人伙伴的交互系统。我们开发的QBAM与传统模型相比,具有更高的记忆容量和召回信度。由于这些优点,所提出的系统可以存储大量的信息及其关系。利用QBAM,我们构建了一个可以与手势、对象和语音信息相关联的交互系统。该系统采用稳态遗传算法,通过图像处理实现目标检测。应用脉冲神经网络记忆手势的时空模式。对于语音识别,我们使用开源的大词汇量连续语音识别引擎Julius。实验结果表明,该系统能够促进与机器人伙伴的通信。
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