DeepFN: Towards Generalizable Facial Action Unit Recognition with Deep Face Normalization
Javier Hernandez, Daniel McDuff, Ognjen (Oggi) Rudovic, Alberto Fung,, Mary Czerwinski

TL;DR
This paper introduces DeepFN, a deep face normalization technique that enhances the generalization of facial action unit recognition models across individuals, genders, skin types, and datasets by reducing data variance.
Contribution
The work proposes a novel deep face normalization method using self-supervised denoising autoencoders to improve model generalization in facial action recognition.
Findings
DeepFN significantly improves person-independent model performance.
Normalization reduces generalization gaps across demographics.
Enhanced robustness of facial action recognition models with DeepFN.
Abstract
Facial action unit recognition has many applications from market research to psychotherapy and from image captioning to entertainment. Despite its recent progress, deployment of these models has been impeded due to their limited generalization to unseen people and demographics. This work conducts an in-depth analysis of performance across several dimensions: individuals(40 subjects), genders (male and female), skin types (darker and lighter), and databases (BP4D and DISFA). To help suppress the variance in data, we use the notion of self-supervised denoising autoencoders to design a method for deep face normalization(DeepFN) that transfers facial expressions of different people onto a common facial template which is then used to train and evaluate facial action recognition models. We show that person-independent models yield significantly lower performance (55% average F1 and accuracy…
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Taxonomy
TopicsFace recognition and analysis · Emotion and Mood Recognition · Face and Expression Recognition
