Gender bias in facial expression recognition
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Ajakirja pealkiri
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Kirjastaja
Tartu Ülikool
Abstrakt
Rapid development of artificial intelligence (AI) systems amplify many concerns in
society. These AI algorithms inherit different biases from humans due to mysterious
operational flow and because of that it is becoming adverse in usage. As a result,
researchers have started to address the issue by investigating deeper in the direction
towards Responsible and Explainable AI. Among variety of applications of AI, facial
expression recognition might not be the most important one, yet is considered as a
valuable part of human-AI interaction. Evolution of facial expression recognition from
the feature based methods to deep learning drastically improve quality of such algorithms.
This thesis aims to study a gender bias in deep learning methods for facial expression
recognition by investigating six distinct neural networks, training them, and further
analysed on the presence of bias, according to the three definition of fairness. The main
outcomes show which models are gender biased, which are not and how gender of subject
affects its emotion recognition. More biased neural networks show bigger accuracy gap
in emotion recognition between male and female test sets. Furthermore, this trend keeps
for true positive and false positive rates. In addition, due to the nature of the research, we
can observe which types of emotions are better classified for men and which for women.
Since the topic of biases in facial expression recognition is not well studied, a spectrum
of continuation of this research is truly extensive, and may comprise detail analysis of
state-of-the-art methods, as well as targeting other biases.
Kirjeldus
Märksõnad
Responsible AI, explainable AI, deep learning, facial expression recognition, gender bias