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Main Authors: Wagner, Niklas, Mätzler, Felix, Vossberg, Samed R., Schneider, Helen, Pavlitska, Svetlana, Zöllner, J. Marius
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.14975
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author Wagner, Niklas
Mätzler, Felix
Vossberg, Samed R.
Schneider, Helen
Pavlitska, Svetlana
Zöllner, J. Marius
author_facet Wagner, Niklas
Mätzler, Felix
Vossberg, Samed R.
Schneider, Helen
Pavlitska, Svetlana
Zöllner, J. Marius
contents Understanding emotions and expressions is a task of interest across multiple disciplines, especially for improving user experiences. Contrary to the common perception, it has been shown that emotions are not discrete entities but instead exist along a continuum. People understand discrete emotions differently due to a variety of factors, including cultural background, individual experiences, and cognitive biases. Therefore, most approaches to expression understanding, particularly those relying on discrete categories, are inherently biased. In this paper, we present a comparative in-depth analysis of two common datasets (AffectNet and EMOTIC) equipped with the components of the circumplex model of affect. Further, we propose a model for the prediction of facial expressions tailored for lightweight applications. Using a small-scaled MaxViT-based model architecture, we evaluate the impact of discrete expression category labels in training with the continuous valence and arousal labels. We show that considering valence and arousal in addition to discrete category labels helps to significantly improve expression inference. The proposed model outperforms the current state-of-the-art models on AffectNet, establishing it as the best-performing model for inferring valence and arousal achieving a 7% lower RMSE. Training scripts and trained weights to reproduce our results can be found here: https://github.com/wagner-niklas/CAGE_expression_inference.
format Preprint
id arxiv_https___arxiv_org_abs_2404_14975
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CAGE: Circumplex Affect Guided Expression Inference
Wagner, Niklas
Mätzler, Felix
Vossberg, Samed R.
Schneider, Helen
Pavlitska, Svetlana
Zöllner, J. Marius
Computer Vision and Pattern Recognition
Understanding emotions and expressions is a task of interest across multiple disciplines, especially for improving user experiences. Contrary to the common perception, it has been shown that emotions are not discrete entities but instead exist along a continuum. People understand discrete emotions differently due to a variety of factors, including cultural background, individual experiences, and cognitive biases. Therefore, most approaches to expression understanding, particularly those relying on discrete categories, are inherently biased. In this paper, we present a comparative in-depth analysis of two common datasets (AffectNet and EMOTIC) equipped with the components of the circumplex model of affect. Further, we propose a model for the prediction of facial expressions tailored for lightweight applications. Using a small-scaled MaxViT-based model architecture, we evaluate the impact of discrete expression category labels in training with the continuous valence and arousal labels. We show that considering valence and arousal in addition to discrete category labels helps to significantly improve expression inference. The proposed model outperforms the current state-of-the-art models on AffectNet, establishing it as the best-performing model for inferring valence and arousal achieving a 7% lower RMSE. Training scripts and trained weights to reproduce our results can be found here: https://github.com/wagner-niklas/CAGE_expression_inference.
title CAGE: Circumplex Affect Guided Expression Inference
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.14975