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Facial Landmark Detection
Facial Landmark Detection On 300W
Facial Landmark Detection On 300W
Metrics
NME
Results
Performance results of various models on this benchmark
Columns
Model Name
NME
Paper Title
Repository
CNN-CRF (Inter-ocular Norm)
3.30
Deep Structured Prediction for Facial Landmark Detection
CFSS
5.76
Face Alignment Across Large Poses: A 3D Solution
-
D-ViT
2.85
Cascaded Dual Vision Transformer for Accurate Facial Landmark Detection
-
3DDE (Inter-ocular Norm)
3.13
Face Alignment using a 3D Deeply-initialized Ensemble of Regression Trees
SAN GT
3.98
Style Aggregated Network for Facial Landmark Detection
FPN
-
FacePoseNet: Making a Case for Landmark-Free Face Alignment
Pose-Invariant
6.30
Pose-Invariant Face Alignment with a Single CNN
-
AnchorFace
3.12
AnchorFace: An Anchor-based Facial Landmark Detector Across Large Poses
CHR2C (Inter-ocular Norm)
3.3
Cascade of Encoder-Decoder CNNs with Learned Coordinates Regressor for Robust Facial Landmarks Detection
Adaloss
3.31
Adaloss: Adaptive Loss Function for Landmark Localization
SPIGA (Inter-ocular Norm)
2.99
Shape Preserving Facial Landmarks with Graph Attention Networks
DCFE (Inter-ocular Norm)
3.24
A Deeply-initialized Coarse-to-fine Ensemble of Regression Trees for Face Alignment
-
FiFA
2.89
Fiducial Focus Augmentation for Facial Landmark Detection
-
3DDFA
7.01
Face Alignment Across Large Poses: A 3D Solution
-
TS3
3.49
Teacher Supervises Students How to Learn From Partially Labeled Images for Facial Landmark Detection
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