首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Multi-Robot Behavior Adaptation to Humans' Intention in Human-Robot Interaction Using Information-Driven Fuzzy Friend-Q Learning
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Multi-Robot Behavior Adaptation to Humans' Intention in Human-Robot Interaction Using Information-Driven Fuzzy Friend-Q Learning

机译:基于信息驱动的模糊Friend-Q学习的多机器人行为适应人机交互的意图

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A multi-robot behavior adaptation mechanism that adapts to human intention is proposed for human-robot interaction (HRI), where information-driven fuzzy friend-Q learning (IDFFQ) is used to generate an optimal behavior-selection policy, and intention is understood mainly based on human emotions. This mechanism aims to endow robots with human-oriented interaction capabilities to understand and adapt their behaviors to human intentions. It also decreases the response time (RT) of robots by embedding the human identification information such as religion for behavior selection, and increases the satisfaction of humans by considering their deep-level information, including intention and emotion, so as to make interactions run smoothly. Experiments is performed in a scenario of drinking at a bar. Results show that the learning steps of the proposal is 51 steps less than that of the fuzzy production rule based friend-Q learning (FPRFQ), and the robots' RT is about 25% of the time consumed by FPRFQ. Additionally, emotion recognition and intention understanding achieved an accuracy of 80.36% and 85.71%, respectively. Moreover, a subjective evaluation of customers through a questionnaire obtains a reaction of "satisfied." Based on these preliminary experiments, the proposal is being extended to service robots for behavior adaptation to customers' intention to drink at a bar.
机译:针对人机交互(HRI),提出了一种适应人的意图的多机器人行为适应机制,该机制采用信息驱动的模糊Friend-Q学习(IDFFQ)生成最优的行为选择策略,并能理解意图主要基于人类的情感。这种机制旨在赋予机器人以人为本的交互能力,以理解并使其行为适应人类的意图。通过嵌入诸如行为选择之类的宗教之类的人类识别信息,还可以减少机器人的响应时间(RT),并通过考虑人类的深层信息(包括意图和情感)来提高人类的满意度,从而使交互顺利进行。在酒吧喝酒的情况下进行实验。结果表明,该方案的学习步骤比基于模糊生产规则的朋友Q学习(FPRFQ)少51步,并且机器人的RT大约是FPRFQ所花费时间的25%。此外,情绪识别和意向理解的准确率分别为80.36%和85.71%。而且,通过问卷调查对顾客进行主观评价得到了“满意”的反应。基于这些初步实验,该建议已扩展到服务机器人,以适应客户在酒吧喝酒的行为。

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