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Detecting User Engagement with a Robot Companion Using Task and Social Interaction-based Features

机译:使用任务和基于社交互动的功能来检测与机器人伴侣的用户互动

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Affect sensitivity is of the utmost importance for a robot companion to be able to display socially intelligent behaviour, a key requirement for sustaining long-term interactions with humans. This paper explores a naturalistic scenario in which children play chess with the iCat, a robot companion. A person-independent, Bayesian approach to detect the user's engagement with the iCat robot is presented. Our framework models both causes and effects of engagement: features related to the user's non-verbal behaviour, the task and the companion's affective reactions are identified to predict the children's level of engagement. An experiment was carried out to train and validate our model. Results show that our approach based on multimodal integration of task and social interaction-based features outperforms those based solely on non-verbal behaviour or contextual information (94.79 % vs. 93.75% and 78.13%).
机译:对于机器人伴侣来说,情感敏感度至关重要,它能够显示出社交智能行为,这是维持与人类长期互动的关键要求。本文探讨了一种自然主义的场景,在这种场景中,儿童与机器人同伴iCat下棋。提出了一种与人无关的贝叶斯方法来检测用户与iCat机器人的互动。我们的框架对参与的原因和结果都进行了建模:与用户的非语言行为,任务和同伴的情感反应相关的功能可以识别,以预测儿童的参与水平。进行了一项实验,以训练和验证我们的模型。结果表明,我们基于任务和基于社交互动的特征的多模式集成的方法优于仅基于非语言行为或上下文信息的方法(94.79%,分别为93.75%和78.13%)。

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