Huestegge Sujata M
Department of Special Education and Speech-Language Pathology, University of Würzburg, Würzburg, Germany.
Institute of Voice and Performing Arts, University of Music and Performing Arts Munich, Munich, Germany.
Front Psychol. 2019 Aug 23;10:1957. doi: 10.3389/fpsyg.2019.01957. eCollection 2019.
Previous research has demonstrated that humans are able to match unfamiliar voices to corresponding faces and vice versa. It has been suggested that this matching ability might be based on common underlying factors that have a characteristic impact on both faces and voices. Some researchers have additionally assumed that dynamic facial information might be especially relevant to successfully match faces to voices. In the present study, static and dynamic face-voice matching ability was compared in a simultaneous presentation paradigm. Additionally, a procedure (matching additionally supported by incidental association learning) was implemented which allowed for reliably excluding participants that did not pay sufficient attention to the task. A comparison of performance between static and dynamic face-voice matching suggested a lack of substantial differences in matching ability, suggesting that dynamic (as opposed to mere static) facial information does not contribute meaningfully to face-voice matching performance. Importantly, this conclusion was not merely derived from the lack of a statistically significant group difference in matching performance (which could principally be explained by assuming low statistical power), but from a Bayesian analysis as well as from an analysis of the 95% confidence interval (CI) of the actual effect size. The extreme border of this CI suggested a maximally plausible dynamic face advantage of less than four percentage points, which was considered way too low to indicate any theoretically meaningful dynamic face advantage. Implications regarding the underlying mechanisms of face-voice matching are discussed.
先前的研究表明,人类能够将不熟悉的声音与相应的面孔进行匹配,反之亦然。有人认为,这种匹配能力可能基于对面孔和声音都有特征性影响的共同潜在因素。一些研究人员还假设,动态面部信息可能与成功地将面孔与声音进行匹配特别相关。在本研究中,在同时呈现范式下比较了静态和动态面孔 - 声音匹配能力。此外,实施了一种程序(通过附带联想学习额外支持匹配),该程序能够可靠地排除那些没有充分关注任务的参与者。静态和动态面孔 - 声音匹配之间的表现比较表明,匹配能力缺乏实质性差异,这表明动态(相对于仅仅静态)面部信息对面孔 - 声音匹配表现没有显著贡献。重要的是,这一结论不仅源于匹配表现中缺乏统计学上显著的组间差异(这原则上可以通过假设统计功效低来解释),还源于贝叶斯分析以及对实际效应大小的95%置信区间(CI)的分析。该CI的极端边界表明,最大可能的动态面孔优势小于四个百分点,这被认为过低,无法表明任何理论上有意义的动态面孔优势。讨论了关于面孔 - 声音匹配潜在机制的影响。