Expression, Affect, Action Unit Recognition: Aff-Wild2, Multi-Task Learning and ArcFace
About
Affective computing has been largely limited in terms of available data resources. The need to collect and annotate diverse in-the-wild datasets has become apparent with the rise of deep learning models, as the default approach to address any computer vision task. Some in-the-wild databases have been recently proposed. However: i) their size is small, ii) they are not audiovisual, iii) only a small part is manually annotated, iv) they contain a small number of subjects, or v) they are not annotated for all main behavior tasks (valence-arousal estimation, action unit detection and basic expression classification). To address these, we substantially extend the largest available in-the-wild database (Aff-Wild) to study continuous emotions such as valence and arousal. Furthermore, we annotate parts of the database with basic expressions and action units. As a consequence, for the first time, this allows the joint study of all three types of behavior states. We call this database Aff-Wild2. We conduct extensive experiments with CNN and CNN-RNN architectures that use visual and audio modalities; these networks are trained on Aff-Wild2 and their performance is then evaluated on 10 publicly available emotion databases. We show that the networks achieve state-of-the-art performance for the emotion recognition tasks. Additionally, we adapt the ArcFace loss function in the emotion recognition context and use it for training two new networks on Aff-Wild2 and then re-train them in a variety of diverse expression recognition databases. The networks are shown to improve the existing state-of-the-art. The database, emotion recognition models and source code are available at http://ibug.doc.ic.ac.uk/resources/aff-wild2.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Facial Expression Recognition | AffectNet 8-way (test) | Accuracy63 | 65 | |
| Facial Expression Recognition | RAF-DB | -- | 45 | |
| Facial Action Unit Detection | DISFA (test) | -- | 39 | |
| Facial Expression Recognition | AffectNet | Accuracy63 | 25 | |
| Expression Recognition | FER 2013 | Accuracy80 | 8 | |
| Expression Recognition | FER 2013 | F1 Score76 | 7 | |
| Expression Recognition | RAF-DB | F1 Score61 | 7 | |
| Valence-Arousal Estimation | AffectNet | CCC (Valence)0.61 | 7 | |
| Expression Recognition | AffectNet | F1 Score54 | 7 | |
| Action Unit Detection | BP4D+ (test) | F1 Score49 | 7 |