Information-driven multi-robot behavior adaptation to intention in human-robot interaction

Lue Feng Chen, Zhen Tao Liu, Min Wu, Fang Yan Dong, Kaoru Hirota

科研成果: 会议稿件论文同行评审

摘要

A multi-robot behavior adaptation mechanism to human intention is proposed in human-robot interaction, where the information-driven fuzzy friend-Q learning (IDFFQ) is used to generate an optimal behavior-selection policy, and intention understanding is done mainly based on human emotions. It aims to endow robots with the human-oriented interaction capabilities in understanding and adapting their behaviors to human intentions, which decreases the response time of robots by embedding the humans' identification information (e.g., religion) for behavior selection, and increases the satisfaction of humans by considering humans' deep-level information (e.g., intention and emotion), so as to make interactions run smoothly. Experiments are 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 report's robot time (computational time) is about 1/4 of the time consumed in FPRFQ. Additionally, emotion recognition and intention understanding receive an accuracy of 80.4% and 85.71%, respectively. Moreover, subjective evaluation of customers through questionnaire obtains a satisfaction of "satisfied". Based on the preliminary experiments, the proposal is being extended to service robots for behavior adaptation to customers' intention to drink at a bar.

会议

会议Joint International Conference of the 10th China-Japan International Workshop on Information Technology and Control Applications and the 6th International Symposium on Computational Intelligence and Industrial Applications, ITCA and ISCIIA 2014
国家/地区中国
Changsha
时期15/09/1420/09/14

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