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System for augmented human–robot interaction through mixed reality and robot training by non-experts in customer service environments

Lotfi El Hafi, Shota Isobe, Y. Tabuchi, Yuki Katsumata, H. Nakamura, Toshinao Fukui, Tadashi Matsuo, Gustavo Alfonso Garcia Ricardez, Masaki Yamamoto, Akira Taniguchi, Yoshinobu Hagiwara, Tadahiro Taniguchi

发表年份
2019
引用次数
45

摘要

Human–robot interaction during general service tasks in home or retail environment has been proven challenging, partly because (1) robots lack high-level context-based cognition and (2) humans cannot intuit the perception state of robots as they can for other humans. To solve these two problems, we present a complete robot system that has been given the highest evaluation score at the Customer Interaction Task of the Future Convenience Store Challenge at the World Robot Summit 2018, which implements several key technologies: (1) a hierarchical spatial concepts formation for general robot task planning and (2) a mixed reality interface to enable users to intuitively visualize the current state of the robot perception and naturally interact with it. The results obtained during the competition indicate that the proposed system allows both non-expert operators and end users to achieve human–robot interactions in customer service environments. Furthermore, we describe a detailed scenario including employee operation and customer interaction which serves as a set of requirements for service robots and a road map for development. The system integration and task scenario described in this paper should be helpful for groups facing customer interaction challenges and looking for a successfully deployed base to build on.

关键词

RobotHuman–computer interactionComputer scienceHuman–robot interactionService robotService (business)Context (archaeology)Task (project management)Augmented realityInterface (matter)

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