The Many Moods of Emotion

Vielzeuf, Valentin, Kervadec, Corentin, Pateux, Stéphane, Jurie, Frédéric

arXiv.org Artificial Intelligence 

Abstract-- This paper presents a novel approach to the facial expression generation problem. Building upon the assumption of the psychological community that emotion is intrinsically continuous, we first design our own continuous emotion representation with a 3-dimensional latent space issued from a neural network trained on discrete emotion classification. The so-obtained representation can be used to annotate large in the wild datasets and later used to trained a Generative Adversarial Network. We first show that our model is able to map back to discrete emotion classes with a objectively and subjectively better quality of the images than usual discrete approaches. But also that we are able to pave the larger space of possible facial expressions, generating the many moods of emotion. Moreover, two axis in this space may be found to generate similar expression changes as in traditional continuous representations such as arousalvalence. Finally we show from visual interpretation, that the third remaining dimension is highly related to the well-known dominance dimension from psychology. Affective computing is a topic of broad interest, finding applications in many fields such as healthcare, marketing or human-machine interfaces.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found