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Telling Stories to Robots: The Effect of Backchanneling on a Child's Storytelling *

机译:告诉机器人的故事:背影对孩子讲故事的影响*

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While there has been a growing body of work in child-robot interaction, we still have very little knowledge regarding young children's speaking and listening dynamics and how a robot companion should decode these behaviors and encode its own in a way children can understand. In developing a backchannel prediction model based on observed nonverbal behaviors of 4-6 year-old children, we investigate the effects of an attentive listening robot on a child's storytelling. We provide an extensive analysis of young children's nonverbal behavior with respect to how they encode and decode listener responses and speaker cues. Through a collected video corpus of peer-to-peer storytelling interactions, we identify attention-related listener behaviors as well as speaker cues that prompt opportunities for listener backchannels. Based on our findings, we developed a backchannel opportunity prediction (BOP) model that detects four main speaker cue events based on prosodic features in a child's speech. This rule-based model is capable of accurately predicting backchanneling opportunities in our corpora. We further evaluate this model in a human-subjects experiment where children told stories to an audience of two robots, each with a different backchanneling strategy. We find that our BOP model produces contingent backchannel responses that conveys an increased perception of an attentive listener, and children prefer telling stories to the BOP model robot.
机译:虽然儿童机器人互动一直是越来越多的工作,但我们仍然对幼儿的说话和听力动力学以及机器人伴侣的阶段仍然非常了解,以及机器人的伴侣应该如何解码这些行为并以孩子们理解的方式编码自己的编码。在基于观察到的4-6岁儿童的非语言行为的建立后沟道预测模型中,我们调查了细心听力机器人对孩子讲故事的影响。我们对幼儿的非语言行为进行了广泛的分析,了解他们如何编码和解码侦听器响应和扬声器提示。通过收集的同伴讲故事互动的视频语料库,我们确定关注有关的倾听者行为以及促使听众背板的机会的扬声器提示。基于我们的研究结果,我们开发了一种基于儿童演讲中的韵律特征的备份机会预测(BOP)模型,可检测四个主要扬声器提示事件。基于规则的模型能够准确地预测Corpora中的后扫描机会。我们进一步评估了在一个人科目实验中的这种模式,儿童讲述了两个机器人的观众的故事,每个都有不同的后扫描策略。我们发现我们的BOP模型产生了偶然的背扫描反应,传达了对细心听众的增加的感知,而儿童更喜欢讲述BOP模型机器人的故事。

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