Automated facial expression measurement in a longitudinal sample of 4- and 8-month-olds Baby FaceReader 9 and manual coding of affective expressions
| Authors |
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| Publication date | 09-2024 |
| Journal | Behavior Research Methods |
| Volume | Issue number | 56 | 6 |
| Pages (from-to) | 5709-5731 |
| Number of pages | 23 |
| Organisations |
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| Abstract |
Facial expressions are among the earliest behaviors infants use to
express emotional states, and are crucial to preverbal social
interaction. Manual coding of infant facial expressions, however, is
laborious and poses limitations to replicability. Recent developments in
computer vision have advanced automated facial expression analyses in
adults, providing reproducible results at lower time investment. Baby
FaceReader 9 is commercially available software for automated
measurement of infant facial expressions, but has received little
validation. We compared Baby FaceReader 9 output to manual micro-coding
of positive, negative, or neutral facial expressions in a longitudinal
dataset of 58 infants at 4 and 8 months of age during naturalistic
face-to-face interactions with the mother, father, and an unfamiliar
adult. Baby FaceReader 9’s global emotional valence formula yielded
reasonable classification accuracy (AUC = .81) for discriminating
manually coded positive from negative/neutral facial expressions;
however, the discrimination of negative from neutral facial expressions
was not reliable (AUC = .58). Automatically detected a priori
action unit (AU) configurations for distinguishing positive from
negative facial expressions based on existing literature were also not
reliable. A parsimonious approach using only automatically detected
smiling (AU12) yielded good performance for discriminating positive from
negative/neutral facial expressions (AUC = .86). Likewise,
automatically detected brow lowering (AU3+AU4) reliably distinguished
neutral from negative facial expressions (AUC = .79). These
results provide initial support for the use of selected automatically
detected individual facial actions to index positive and negative affect
in young infants, but shed doubt on the accuracy of complex a priori
formulas.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.3758/s13428-023-02301-3 |
| Other links | https://github.com/MZaharieva/Baby_FaceReader9_Validation https://www.scopus.com/pages/publications/85182980278 |
| Downloads |
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