Słowiński Piotr, Zhai Chao, Alderisio Francesco, Salesse Robin, Gueugnon Mathieu, Marin Ludovic, Bardy Benoit G, di Bernardo Mario, Tsaneva-Atanasova Krasimira
Department of Mathematics, College of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter EX4 4QF, UK.
Department of Engineering Mathematics, University of Bristol, Merchant Venturers' Building, Bristol BS8 1UB, UK.
J R Soc Interface. 2016 Mar;13(116). doi: 10.1098/rsif.2015.1093.
Human movement has been studied for decades, and dynamic laws of motion that are common to all humans have been derived. Yet, every individual moves differently from everyone else (faster/slower, harder/smoother, etc.). We propose here an index of such variability, namely an individual motor signature (IMS) able to capture the subtle differences in the way each of us moves. We show that the IMS of a person is time-invariant and that it significantly differs from those of other individuals. This allows us to quantify the dynamic similarity, a measure of rapport between dynamics of different individuals' movements, and demonstrate that it facilitates coordination during interaction. We use our measure to confirm a key prediction of the theory of similarity that coordination between two individuals performing a joint-action task is higher if their motions share similar dynamic features. Furthermore, we use a virtual avatar driven by an interactive cognitive architecture based on feedback control theory to explore the effects of different kinematic features of the avatar motion on coordination with human players.
对人类运动的研究已有数十年,人们得出了适用于所有人的动态运动定律。然而,每个人的运动方式都与其他人不同(更快/更慢、更用力/更平稳等)。我们在此提出一种衡量这种变异性的指标,即个体运动特征(IMS),它能够捕捉我们每个人运动方式中的细微差异。我们表明,一个人的IMS是时间不变的,并且与其他人的IMS有显著差异。这使我们能够量化动态相似性,即衡量不同个体运动动态之间融洽程度的指标,并证明它有助于互动过程中的协调。我们用我们的方法证实了相似性理论的一个关键预测,即执行联合动作任务的两个人之间,如果他们的动作具有相似的动态特征,那么他们之间的协调性会更高。此外,我们使用由基于反馈控制理论的交互式认知架构驱动的虚拟化身,来探索化身运动的不同运动学特征对与人类玩家协调的影响。