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Automated Proxemic Feature Extraction and Behavior Recognition: Applications in Human-Robot Interaction

机译:自动近邻特征提取和行为识别:在人机交互中的应用

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摘要

In this work, we discuss a set of feature representations for analyzing human spatial behavior (proxemics) motivated by metrics used in the social sciences. Specifically, we consider individual, physical, and psychophysical factors that contribute to social spacing. We demonstrate the feasibility of autonomous real-time annotation of these proxemic features during a social interaction between two people and a humanoid robot in the presence of a visual obstruction (a physical barrier). We then use two different feature representations—physical and psychophysical—to train Hidden Markov Models (HMMs) to recognize spatiotemporal behaviors that signify transitions into (initiation) and out of (termination) a social interaction. We demonstrate that the HMMs trained on psychophysical features, which encode the sensory experience of each interacting agent, outperform those trained on physical features, which only encode spatial relationships. These results suggest a more powerful representation of proxemic behavior with particular implications in autonomous socially interactive and socially assistive robotics.
机译:在这项工作中,我们讨论了一组特征表示形式,用于分析由社会科学中使用的度量所激发的人类空间行为(近似)。具体来说,我们考虑个人,身体和心理方面的因素,这些因素会导致社会间隔。我们演示了在视觉障碍(物理障碍)存在下两个人与人形机器人之间的社交互动过程中,自动实时注释这些近邻特征的可行性。然后,我们使用两种不同的特征表示法(物理的和心理的物理的)来训练隐马尔可夫模型(HMM),以识别时空行为,这些时空行为表示向社交交互的过渡(发起)和退出(终止)。我们证明,在心理生理特征上训练的HMM编码每个交互代理的感官体验,优于在物理特征上训练的HMM(仅编码空间关系)。这些结果表明,在自主的社交互动和社交辅助机器人技术中,近距离行为的表现更为有力,特别有意义。

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