A Comparison of the Affectiva iMotions Facial Expression Analysis Software With EMG for Identifying Facial Expressions of Emotion

2020 | Zeitschriftenartikel. Eine Publikation mit Affiliation zur Georg-August-Universität Göttingen.

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​A Comparison of the Affectiva iMotions Facial Expression Analysis Software With EMG for Identifying Facial Expressions of Emotion​
Kulke, L. ; Feyerabend, D. & Schacht, A. ​ (2020) 
Frontiers in Psychology11.​ DOI: https://doi.org/10.3389/fpsyg.2020.00329 

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Autor(en)
Kulke, Louisa ; Feyerabend, Dennis; Schacht, Annekathrin 
Zusammenfassung
Human faces express emotions, informing others about their affective states. In order to measure expressions of emotion, facial Electromyography (EMG) has widely been used, requiring electrodes and technical equipment. More recently, emotion recognition software has been developed that detects emotions from video recordings of human faces. However, its validity and comparability to EMG measures is unclear. The aim of the current study was to compare the Affectiva Affdex emotion recognition software by iMotions with EMG measurements of the zygomaticus mayor and corrugator supercilii muscle, concerning its ability to identify happy, angry and neutral faces. Twenty participants imitated these facial expressions while videos and EMG were recorded. Happy and angry expressions were detected by both the software and by EMG above chance, while neutral expressions were more often falsely identified as negative by EMG compared to the software. Overall, EMG and software values correlated highly. In conclusion, Affectiva Affdex software can identify facial expressions and its results are comparable to EMG findings.
Erscheinungsdatum
2020
Herausgeber
Frontiers Media S.A.
Zeitschrift
Frontiers in Psychology 
eISSN
1664-1078
eISSN
1664-1078
Sprache
Englisch
Förderer
Open-Access-Publikationsfonds 2020

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