GANmut: Generating and Modifying Facial Expressions
Maria Surani

TL;DR
GANmut is an advanced GAN framework that learns a dynamic emotion space for realistic facial expression synthesis, with this study benchmarking its performance across diverse datasets, resolutions, and face detection methods.
Contribution
This paper extends GANmut by benchmarking its performance on multiple datasets, resolutions, and detection methods, providing insights into its robustness and effectiveness in real-world scenarios.
Findings
GANmut effectively synthesizes diverse facial emotions.
Performance varies with dataset and face detection method.
Combining datasets improves emotion synthesis quality.
Abstract
In the realm of emotion synthesis, the ability to create authentic and nuanced facial expressions continues to gain importance. The GANmut study discusses a recently introduced advanced GAN framework that, instead of relying on predefined labels, learns a dynamic and interpretable emotion space. This methodology maps each discrete emotion as vectors starting from a neutral state, their magnitude reflecting the emotion's intensity. The current project aims to extend the study of this framework by benchmarking across various datasets, image resolutions, and facial detection methodologies. This will involve conducting a series of experiments using two emotional datasets: Aff-Wild2 and AffNet. Aff-Wild2 contains videos captured in uncontrolled environments, which include diverse camera angles, head positions, and lighting conditions, providing a real-world challenge. AffNet offers images…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Emotion and Mood Recognition · Face recognition and analysis
MethodsFocus
