Human and machine validation of 14 databases of dynamic facial expressions

被引:0
作者
Eva G. Krumhuber
Dennis Küster
Shushi Namba
Lina Skora
机构
[1] University College London,Department of Experimental Psychology
[2] University of Bremen,School of Psychology
[3] Jacobs University Bremen,undefined
[4] Hiroshima University,undefined
[5] University of Sussex,undefined
来源
Behavior Research Methods | 2021年 / 53卷
关键词
Facial expression; Emotion; Dynamic; Database; Machine analysis; FACS;
D O I
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中图分类号
学科分类号
摘要
With a shift in interest toward dynamic expressions, numerous corpora of dynamic facial stimuli have been developed over the past two decades. The present research aimed to test existing sets of dynamic facial expressions (published between 2000 and 2015) in a cross-corpus validation effort. For this, 14 dynamic databases were selected that featured facial expressions of the basic six emotions (anger, disgust, fear, happiness, sadness, surprise) in posed or spontaneous form. In Study 1, a subset of stimuli from each database (N = 162) were presented to human observers and machine analysis, yielding considerable variance in emotion recognition performance across the databases. Classification accuracy further varied with perceived intensity and naturalness of the displays, with posed expressions being judged more accurately and as intense, but less natural compared to spontaneous ones. Study 2 aimed for a full validation of the 14 databases by subjecting the entire stimulus set (N = 3812) to machine analysis. A FACS-based Action Unit (AU) analysis revealed that facial AU configurations were more prototypical in posed than spontaneous expressions. The prototypicality of an expression in turn predicted emotion classification accuracy, with higher performance observed for more prototypical facial behavior. Furthermore, technical features of each database (i.e., duration, face box size, head rotation, and motion) had a significant impact on recognition accuracy. Together, the findings suggest that existing databases vary in their ability to signal specific emotions, thereby facing a trade-off between realism and ecological validity on the one end, and expression uniformity and comparability on the other.
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页码:686 / 701
页数:15
相关论文
共 173 条
[41]  
McKeown G(1987)Emotion knowledge: Further exploration of a prototype approach Journal of Personality and Social Psychology 52 1061-162
[42]  
Ekman P(2019)Assessing the convergent validity between the automated emotion recognition software Noldus FaceReader 7 and Facial Action Coding System Scoring Plos One 14 e0223905-58
[43]  
Ekman P(2018)Facial expression analysis with AFFDEX and FACET: A validation study Behavior Research Methods 50 1446-558
[44]  
Cordaro DT(2019)Shrinkage priors for Bayesian penalized regression Journal of Mathematical Psychology 89 31-706
[45]  
Frank MG(1990)The spontaneous facial expression of differential positive and negative emotions Motivation and Emotion 14 27-undefined
[46]  
Stennett J(2016)Validation of the Amsterdam Dynamic Facial Expression Set--Bath Intensity Variations (ADFES-BIV): A set of videos expressing low, intermediate, and high intensity emotions PlosOne 11 e0147112-undefined
[47]  
Goeleven E(2017)Gently does it: Humans outperform a software classifier in recognizing subtle, nonstereotypical facial expressions Emotion 17 1187-undefined
[48]  
De Raedt R(2012)Perception-driven facial expression synthesis Computers & Graphics 36 152-undefined
[49]  
Leyman L(2009)A survey of facial affect recognition methods: Audio, visual and spontaneous expressions IEEE Transactions on Pattern Analysis and Machine Intelligence 31 39-undefined
[50]  
Verschuere B(2004)Spacetime faces: High resolution capture for modeling and animation ACM Transaction on Graphics 23 548-undefined