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Detecting Perceived Appropriateness of a Robot's Social Positioning Behavior from Non-Verbal Cues

机译:从非语言提示中检测机器人的社会定位行为的适当性

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What if a robot could detect when you think it got too close to you during its approach? This would allow it to correct or compensate for its social 'mistake'. It would also allow for a responsive approach, where that robot would reactively find suitable approach behavior through and during the interaction. We investigated if it is possible to automatically detect such social feedback cues in the context of a robot approaching a person. We collected a dataset in which our robot would repeatedly approach people (n=30) to verbally deliver a message. Approach distance and environmental noise were manipulated, and our participants were tracked (position and orientation of upper body and head). We evaluated their perception of the robot's behavior through questionnaires and found no single or joint effects of the manipulations. This showed that, in this case, personal differences are more important than contextual cues - thus highlighting the importance of responding to behavioral feedback. This dataset is being made publicly available as part of this publication † . On this dataset, we then trained a random forest classifier to infer people's perception of the robot's approach behavior from features generated from the response behaviors. This resulted in a set of relevant features that perform significantly better than chance for a participant-dependent classifier; which implies that the behaviors of our participants, even with our relatively limited tracking, contain interpretable information about their perception of the robot's behavior. Our findings demonstrate, for this specific context, that the observable behavior of people does indeed contain usable information about their subjective perception of a robot's behavior. As such they, together with the dataset, provide a stepping stone for future research into the automatic detection of such social feedback cues, e.g. with other or more fine-grained observations of people's behavior (such as facial expressions), with more sophisticated machine learning techniques, and/or in different contexts.
机译:如果机器人在接近过程中认为自己离您太近了,该怎么办?这将使它能够纠正或补偿其社会“错误”。它还将允许响应式进近,其中该机器人将在交互过程中和交互过程中以反应方式找到合适的进近行为。我们调查了是否有可能在机器人接近某个人的情况下自动检测到此类社交反馈提示。我们收集了一个数据集,在该数据集中,我们的机器人将反复与人(n = 30)进行口头传递消息。操作进近距离和环境噪声,并跟踪我们的参与者(上身和头部的位置和方向)。我们通过问卷调查评估了他们对机器人行为的感知,未发现操纵的单一或联合影响。这表明,在这种情况下,个人差异比上下文提示更为重要-因此突出了对行为反馈做出反应的重要性。此数据集已作为本出版物的一部分†公开提供。然后,在此数据集上,我们训练了一个随机森林分类器,以根据响应行为生成的特征来推断人们对机器人进近行为的感知。这导致了一组相关功能,其表现要好于依赖于参与者的分类器。这意味着即使我们跟踪的参与者相对有限,我们的参与者的行为也包含有关他们对机器人行为感知的可解释信息。我们的发现表明,在这种特定情况下,人们的可观察到的行为确实确实包含有关他们对机器人行为的主观感知的有用信息。这样,它们与数据集一起,为将来研究自动检测此类社交反馈提示(例如,社交媒体)提供了垫脚石。与其他或更详细的人的行为观察(例如面部表情),更复杂的机器学习技术和/或在不同上下文中的观察。

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