Abstract

Even though culture has been found to play some role in negative emotion expression, affective computing research primarily takes on a basic emotion approach when analyzing social signals for automatic emotion recognition technologies. Furthermore, automatic negative emotion recognition systems still train data that originates primarily from North America and contains a majority of Caucasian training samples. As such, the current study aims to address this problem by analyzing what the differences are of the underlying social signals by leveraging machine learning models to classify 3 negative emotions, contempt, anger and disgust (CAD) amongst 3 different cultures: North American, Persian, and Filipino. Using a curated data set compiled from YouTube videos, a support vector machine (SVM) was used to predict negative emotions amongst differing cultures. In addition a one-way ANOVA was used to analyse the differences that exist between each culture group in-terms of level of activation of underlying social signal. Our results not only highlighted the significant differences in the associated social signals that were activated for each culture, but also indicated the specific underlying social signals that differ in our cross-cultural data sets. Furthermore, the automatic classification methods showed North American expressions of CAD to be well-recognized, while Filipino and Persian expressions were recognized at near chance levels.

Highlights

  • Culture has been identified to play a significant role in our upbringing, influencing the perception and expression of emotional experiences (Mesquita et al, 2016; Barrett et al, 2019; Schouten et al, 2020)

  • Images themselves can be used for classification purposes the current study aims to address how Action Units (AUs) vary amongst different cultures and how using AUs as attributes can be used to classify negative emotions

  • In order to do so, we identified underlying differences in our cross-cultural data set, which focused here on negative emotion expressions

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Summary

Introduction

Culture has been identified to play a significant role in our upbringing, influencing the perception and expression of emotional experiences (Mesquita et al, 2016; Barrett et al, 2019; Schouten et al, 2020). There is still a large body of research regarding emotion recognition technologies that treats all cultures using a basic emotion, or common view, approach. This approach emphasizes a common underlying structure for each emotion expressed cross-culturally (Barrett et al, 2019). A social constructivist approach emphasizes individuality of social influence on humans emotion expression and perception (Fragopanagos and Taylor, 2005). Researchers, such as Jack et al (2012) have illustrated that different cultures demonstrate emotions

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