Pre-scheduled Turn-Taking between Robots to Make Conversation Coherent

T. Iio, Y. Yoshikawa, H. Ishiguro
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引用次数: 23

Abstract

Since a talking robot cannot escape from errors in recognizing user's speech in daily environment, its verbal responses are sometimes felt as incoherent with the context of conversation. This paper presents a solution to this problem that generates a social context where a user is guided to find coherency of the robot's utterances, even though its response is produced according to incorrect recognition of user's speech. We designed a novel turn-taking pattern in which two robots behave according to a pre-scheduled scenario to generate such a social context. Two experiments proved that participants who talked to two robots using that turn-taking pattern felt robot's responses to be more coherent than those who talked to one robot not using it; therefore, our proposed turn-taking pattern generated a social context for user's flexible interpretation of robot's responses. This result implies a potential of a multiple robots approach for improving the quality of human-robot conversation.
在机器人之间预先安排轮流,使对话连贯
由于会说话的机器人在日常环境中无法避免识别用户语音的错误,它的口头反应有时会被认为与对话的上下文不连贯。本文提出了一种解决这个问题的方法,它生成了一个社会环境,在这个环境中,用户被引导去寻找机器人话语的连贯性,即使它的响应是根据对用户语音的错误识别而产生的。我们设计了一种新颖的轮流模式,在这种模式中,两个机器人根据预先设定的场景行事,从而产生这样的社会环境。两个实验证明,与使用这种轮流模式的机器人交谈的参与者觉得,与不使用这种模式的机器人交谈的参与者相比,机器人的反应更连贯;因此,我们提出的轮流模式为用户对机器人反应的灵活解释创造了一个社会背景。这一结果暗示了多机器人方法提高人机对话质量的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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