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A reduced-dimensionality approach to uncovering dyadic modes of body motion in conversations

机译:在对话中发现身体运动的二元模式的降维方法

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摘要

Face-to-face conversations are central to human communication and a fascinating example of joint action. Beyond verbal content, one of the primary ways in which information is conveyed in conversations is body language. Body motion in natural conversations has been difficult to study precisely due to the large number of coordinates at play. There is need for fresh approaches to analyze and understand the data, in order to ask whether dyads show basic building blocks of coupled motion. Here we present a method for analyzing body motion during joint action using depth-sensing cameras, and use it to analyze a sample of scientific conversations. Our method consists of three steps: defining modes of body motion of individual participants, defining dyadic modes made of combinations of these individual modes, and lastly defining motion motifs as dyadic modes that occur significantly more often than expected given the single-person motion statistics. As a proof-of-concept, we analyze the motion of 12 dyads of scientists measured using two Microsoft Kinect cameras. In our sample, we find that out of many possible modes, only two were motion motifs: synchronized parallel torso motion in which the participants swayed from side to side in sync, and still segments where neither person moved. We find evidence of dyad individuality in the use of motion modes. For a randomly selected subset of 5 dyads, this individuality was maintained for at least 6 months. The present approach to simplify complex motion data and to define motion motifs may be used to understand other joint tasks and interactions. The analysis tools developed here and the motion dataset are publicly available.
机译:面对面的对话是人类交流的中心,也是联合行动的一个有趣例子。除了言语内容,在对话中传达信息的主要方式之一就是肢体语言。由于正在播放大量的坐标,因此很难精确地研究自然对话中的身体运动。需要新的方法来分析和理解数据,以便询问二元组是否显示了耦合运动的基本构建块。在这里,我们介绍了一种使用深度感应相机在关节动作期间分析人体运动的方法,并将其用于分析科学对话的样本。我们的方法包括三个步骤:定义单个参与者的身体运动模式,定义由这些单个模式的组合构成的二进位模式,最后将运动图案定义为二进位模式,其出现频率大大超过给定单人运动统计数据所预期的次数。作为概念验证,我们分析了使用两台Microsoft Kinect相机测量的12位二重体的运动。在我们的样本中,我们发现在许多可能的模式中,只有两个是运动主题:同步平行躯干运动,其中参与者同步地从一侧到另一侧摇摆,并且仍然分割没有人移动的位置。我们发现在使用运动模式时存在二元性的证据。对于随机选择的5个二元组,此个性至少维持6个月。用于简化复杂运动数据并定义运动主题的本方法可用于理解其他联合任务和交互。此处开发的分析工具和运动数据集可公开获得。

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