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SOTA
Facial Expression Recognition (FER)
Facial Expression Recognition On Affectnet
Facial Expression Recognition On Affectnet
Metrics
Accuracy (8 emotion)
Results
Performance results of various models on this benchmark
Columns
Model Name
Accuracy (8 emotion)
Paper Title
Norface
68.69
Norface: Improving Facial Expression Analysis by Identity Normalization
DDAMFN++
65.04
A Dual-Direction Attention Mixed Feature Network for Facial Expression Recognition
FMAE
65.00
Representation Learning and Identity Adversarial Training for Facial Behavior Understanding
QCS
64.4
QCS: Feature Refining from Quadruplet Cross Similarity for Facial Expression Recognition
BTN
64.29
Batch Transformer: Look for Attention in Batch
DDAMFN
64.25
A Dual-Direction Attention Mixed Feature Network for Facial Expression Recognition
EmoNeXt
64.13
A novel deep learning approach for facial emotion recognition: application to detecting emotional responses in elderly individuals with Alzheimer’s disease
POSTER++
63.77
POSTER++: A simpler and stronger facial expression recognition network
LFNSB
63.12
A Lightweight Model Enhancing Facial Expression Recognition with Spatial Bias and Cosine-Harmony Loss
S2D
63.06
From Static to Dynamic: Adapting Landmark-Aware Image Models for Facial Expression Recognition in Videos
Multi-task EfficientNet-B2
63.03
Classifying emotions and engagement in online learning based on a single facial expression recognition neural network
MT-ArcRes
63
Expression, Affect, Action Unit Recognition: Aff-Wild2, Multi-Task Learning and ArcFace
Vit-base + MAE
62.42
Emotion Separation and Recognition from a Facial Expression by Generating the Poker Face with Vision Transformers
CAGE
62.2
CAGE: Circumplex Affect Guided Expression Inference
DAN
62.09
Distract Your Attention: Multi-head Cross Attention Network for Facial Expression Recognition
SL + SSL in-panting-pl (B0)
61.72
Using Self-Supervised Auxiliary Tasks to Improve Fine-Grained Facial Representation
Distilled student
61.60
Leveraging Recent Advances in Deep Learning for Audio-Visual Emotion Recognition
SL + SSL puzzling (B2)
61.32
Using Self-Supervised Auxiliary Tasks to Improve Fine-Grained Facial Representation
Multi-task EfficientNet-B0
61.32
Facial expression and attributes recognition based on multi-task learning of lightweight neural networks
SL + SSL puzzling (B0)
61.09
Using Self-Supervised Auxiliary Tasks to Improve Fine-Grained Facial Representation
0 of 49 row(s) selected.
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