Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

EMOCA: Emotion Driven Monocular Face Capture and Animation

About

As 3D facial avatars become more widely used for communication, it is critical that they faithfully convey emotion. Unfortunately, the best recent methods that regress parametric 3D face models from monocular images are unable to capture the full spectrum of facial expression, such as subtle or extreme emotions. We find the standard reconstruction metrics used for training (landmark reprojection error, photometric error, and face recognition loss) are insufficient to capture high-fidelity expressions. The result is facial geometries that do not match the emotional content of the input image. We address this with EMOCA (EMOtion Capture and Animation), by introducing a novel deep perceptual emotion consistency loss during training, which helps ensure that the reconstructed 3D expression matches the expression depicted in the input image. While EMOCA achieves 3D reconstruction errors that are on par with the current best methods, it significantly outperforms them in terms of the quality of the reconstructed expression and the perceived emotional content. We also directly regress levels of valence and arousal and classify basic expressions from the estimated 3D face parameters. On the task of in-the-wild emotion recognition, our purely geometric approach is on par with the best image-based methods, highlighting the value of 3D geometry in analyzing human behavior. The model and code are publicly available at https://emoca.is.tue.mpg.de.

Radek Danecek, Michael J. Black, Timo Bolkart• 2022

Related benchmarks

TaskDatasetResultRank
3D Face ReconstructionNoW face challenge (test)
Median Error (mm)1.0936
38
3D Face ReconstructionREALY (frontal-view)
Overall Error2.103
34
Single-view 3D face reconstructionREALY-S side-view
NMSE (All, Avg)2.125
24
Monocular 3D Face ReconstructionNoW (val)
Full Median Error1.1757
20
3D Face ReconstructionNeRSemble-SVFR (Posed)
L1 Error2.63
10
Emotion RecognitionAFEW-VA 1.0 (5-fold Cross-val)
PCC (Valence)0.68
9
Emotion RecognitionAffectNet v1 (test)
Valence CCC0.77
9
Expression ClassificationAffectNet 59 (test)
Accuracy69
9
Valence-Arousal EstimationAffectNet 59 (test)
Valence PCC0.78
9
3D Face ReconstructionNeRSemble-SVFR (Neutral)
L1 Error2.21
9
Showing 10 of 17 rows

Other info

Code

Follow for update