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Self-Supervised Monocular 3D Face Reconstruction by Occlusion-Aware Multi-view Geometry Consistency

About

Recent learning-based approaches, in which models are trained by single-view images have shown promising results for monocular 3D face reconstruction, but they suffer from the ill-posed face pose and depth ambiguity issue. In contrast to previous works that only enforce 2D feature constraints, we propose a self-supervised training architecture by leveraging the multi-view geometry consistency, which provides reliable constraints on face pose and depth estimation. We first propose an occlusion-aware view synthesis method to apply multi-view geometry consistency to self-supervised learning. Then we design three novel loss functions for multi-view consistency, including the pixel consistency loss, the depth consistency loss, and the facial landmark-based epipolar loss. Our method is accurate and robust, especially under large variations of expressions, poses, and illumination conditions. Comprehensive experiments on the face alignment and 3D face reconstruction benchmarks have demonstrated superiority over state-of-the-art methods. Our code and model are released in https://github.com/jiaxiangshang/MGCNet.

Jiaxiang Shang, Tianwei Shen, Shiwei Li, Lei Zhou, Mingmin Zhen, Tian Fang, Long Quan• 2020

Related benchmarks

TaskDatasetResultRank
Face AlignmentAFLW 2000-3D 68 pts (test)
Mean NME3.2
82
3D Face ReconstructionNoW face challenge (test)
Median Error (mm)1.31
38
3D Face ReconstructionREALY (frontal-view)
Overall Error1.774
34
Single-view 3D face reconstructionREALY-S side-view
NMSE (All, Avg)1.787
24
Face shape estimationNoW Challenge original (test)
Non-Metrical Median Error1.31
13
3D Face ReconstructionREALY
Nose Error1.771
10
3D Face ReconstructionMead
R Eye Error64.42
9
Expression ClassificationAffectNet 59 (test)
Accuracy60
9
Valence-Arousal EstimationAffectNet 59 (test)
Valence PCC0.71
9
Emotion RecognitionAffectNet v1 (test)
Valence CCC0.69
9
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