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Effective learning system techniques for human-robot interaction in service environment

机译:服务环境中人机交互的有效学习系统技术

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摘要

HRI (Human-Robot Interaction) is often frequent and intense in assistive service environment and it is known that realizing human-friendly interaction is a very difficult task because of human presence as a subsystem of the interaction process. After briefly discussing typical HRI models and characteristics of human we point out that learning aspect would play an important role for designing the interaction process of the human-in-the loop system. We then show that the soft computing toolbox approach, especially with fuzzy set-based learning techniques, can be effectively adopted for modeling human behavior patterns as well as for processing human bio-signals including facial expressions, hand/ body gestures, EMG and so forth. Two project works are briefly described to illustrate how the fuzzy logic-based learning techniques and the soft computing toolbox approach are successfully applied for human-friendly HRI systems. Next, we observe that probabilistic fuzzy rules can handle inconsistent data patterns originated from human, and show that combination of fuzzy logic, fuzzy clustering, and probabilistic reasoning in a single frame leads to an algorithm of iterative fuzzy clustering with supervision. Further, we discuss a possibility of using the algorithm for inductively constructing probabilistic fuzzy rule base in a learning system of a smart home. Finally, we propose a life-long learning system architecture for the HRI type of human-in-the-loop systems.
机译:在辅助服务环境中,HRI(人机交互)通常是频繁且激烈的,并且众所周知,由于人为交互过程的子系统,实现人与人之间的交互是一项非常困难的任务。在简要讨论了人类的典型HRI模型和特征之后,我们指出学习方面对于设计人在环系统的交互过程将起重要作用。然后,我们证明软计算工具箱方法(尤其是基于模糊集的学习技术)可以有效地用于建模人类行为模式以及处理人类生物信号(包括面部表情,手/身体手势,EMG等) 。简要描述了两个项目,以说明如何将基于模糊逻辑的学习技术和软计算工具箱方法成功应用于人性化的HRI系统。接下来,我们观察到概率模糊规则可以处理源自人的不一致的数据模式,并且表明将模糊逻辑,模糊聚类和概率推理结合在一个框架中会导致一种带有监督的迭代模糊聚类算法。此外,我们讨论了使用该算法在智能家居学习系统中归纳构建概率模糊规则库的可能性。最后,我们为HRI类型的在环系统提出了终身学习系统架构。

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