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Papers/GReFEL: Geometry-Aware Reliable Facial Expression Learning...

GReFEL: Geometry-Aware Reliable Facial Expression Learning under Bias and Imbalanced Data Distribution

Azmine Toushik Wasi, Taki Hasan Rafi, Raima Islam, Karlo Serbetar, Dong Kyu Chae

2024-10-21Facial Expression RecognitionFacial Expression Recognition (FER)
PaperPDF

Abstract

Reliable facial expression learning (FEL) involves the effective learning of distinctive facial expression characteristics for more reliable, unbiased and accurate predictions in real-life settings. However, current systems struggle with FEL tasks because of the variance in people's facial expressions due to their unique facial structures, movements, tones, and demographics. Biased and imbalanced datasets compound this challenge, leading to wrong and biased prediction labels. To tackle these, we introduce GReFEL, leveraging Vision Transformers and a facial geometry-aware anchor-based reliability balancing module to combat imbalanced data distributions, bias, and uncertainty in facial expression learning. Integrating local and global data with anchors that learn different facial data points and structural features, our approach adjusts biased and mislabeled emotions caused by intra-class disparity, inter-class similarity, and scale sensitivity, resulting in comprehensive, accurate, and reliable facial expression predictions. Our model outperforms current state-of-the-art methodologies, as demonstrated by extensive experiments on various datasets.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingFER+Accuracy93.09GReFEL
Facial Recognition and ModellingAff-Wild2Accuracy72.48GReFEL
Facial Recognition and ModellingFERGAccuracy98.18GReFEL
Facial Recognition and ModellingJAFFEAccuracy96.67GReFEL
Facial Recognition and ModellingRAF-DBOverall Accuracy92.47GReFEL
Face ReconstructionFER+Accuracy93.09GReFEL
Face ReconstructionAff-Wild2Accuracy72.48GReFEL
Face ReconstructionFERGAccuracy98.18GReFEL
Face ReconstructionJAFFEAccuracy96.67GReFEL
Face ReconstructionRAF-DBOverall Accuracy92.47GReFEL
Facial Expression Recognition (FER)FER+Accuracy93.09GReFEL
Facial Expression Recognition (FER)JAFFEAccuracy96.67GReFEL
Facial Expression Recognition (FER)FERGAccuracy98.18GReFEL
Facial Expression Recognition (FER)Aff-Wild2Accuracy72.48GReFEL
Facial Expression Recognition (FER)RAF-DBOverall Accuracy92.47GReFEL
3DFER+Accuracy93.09GReFEL
3DAff-Wild2Accuracy72.48GReFEL
3DFERGAccuracy98.18GReFEL
3DJAFFEAccuracy96.67GReFEL
3DRAF-DBOverall Accuracy92.47GReFEL
3D Face ModellingFER+Accuracy93.09GReFEL
3D Face ModellingJAFFEAccuracy96.67GReFEL
3D Face ModellingFERGAccuracy98.18GReFEL
3D Face ModellingAff-Wild2Accuracy72.48GReFEL
3D Face ModellingRAF-DBOverall Accuracy92.47GReFEL
3D Face ReconstructionFER+Accuracy93.09GReFEL
3D Face ReconstructionAff-Wild2Accuracy72.48GReFEL
3D Face ReconstructionFERGAccuracy98.18GReFEL
3D Face ReconstructionJAFFEAccuracy96.67GReFEL
3D Face ReconstructionRAF-DBOverall Accuracy92.47GReFEL

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