TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Batch Transformer: Look for Attention in Batch

Batch Transformer: Look for Attention in Batch

Myung Beom Her, Jisu Jeong, Hojoon Song, Ji-Hyeong Han

2024-07-05Facial Expression RecognitionFacial Expression Recognition (FER)
PaperPDF

Abstract

Facial expression recognition (FER) has received considerable attention in computer vision, with "in-the-wild" environments such as human-computer interaction. However, FER images contain uncertainties such as occlusion, low resolution, pose variation, illumination variation, and subjectivity, which includes some expressions that do not match the target label. Consequently, little information is obtained from a noisy single image and it is not trusted. This could significantly degrade the performance of the FER task. To address this issue, we propose a batch transformer (BT), which consists of the proposed class batch attention (CBA) module, to prevent overfitting in noisy data and extract trustworthy information by training on features reflected from several images in a batch, rather than information from a single image. We also propose multi-level attention (MLA) to prevent overfitting the specific features by capturing correlations between each level. In this paper, we present a batch transformer network (BTN) that combines the above proposals. Experimental results on various FER benchmark datasets show that the proposed BTN consistently outperforms the state-ofthe-art in FER datasets. Representative results demonstrate the promise of the proposed BTN for FER.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingRAF-DBAvg. Accuracy87.3BTN
Facial Recognition and ModellingRAF-DBOverall Accuracy92.54BTN
Facial Recognition and ModellingAffectNetAccuracy (7 emotion)67.6BTN
Facial Recognition and ModellingAffectNetAccuracy (8 emotion)64.29BTN
Face ReconstructionRAF-DBAvg. Accuracy87.3BTN
Face ReconstructionRAF-DBOverall Accuracy92.54BTN
Face ReconstructionAffectNetAccuracy (7 emotion)67.6BTN
Face ReconstructionAffectNetAccuracy (8 emotion)64.29BTN
Facial Expression Recognition (FER)RAF-DBAvg. Accuracy87.3BTN
Facial Expression Recognition (FER)RAF-DBOverall Accuracy92.54BTN
Facial Expression Recognition (FER)AffectNetAccuracy (7 emotion)67.6BTN
Facial Expression Recognition (FER)AffectNetAccuracy (8 emotion)64.29BTN
3DRAF-DBAvg. Accuracy87.3BTN
3DRAF-DBOverall Accuracy92.54BTN
3DAffectNetAccuracy (7 emotion)67.6BTN
3DAffectNetAccuracy (8 emotion)64.29BTN
3D Face ModellingRAF-DBAvg. Accuracy87.3BTN
3D Face ModellingRAF-DBOverall Accuracy92.54BTN
3D Face ModellingAffectNetAccuracy (7 emotion)67.6BTN
3D Face ModellingAffectNetAccuracy (8 emotion)64.29BTN
3D Face ReconstructionRAF-DBAvg. Accuracy87.3BTN
3D Face ReconstructionRAF-DBOverall Accuracy92.54BTN
3D Face ReconstructionAffectNetAccuracy (7 emotion)67.6BTN
3D Face ReconstructionAffectNetAccuracy (8 emotion)64.29BTN

Related Papers

Multimodal Prompt Alignment for Facial Expression Recognition2025-06-26Enhancing Ambiguous Dynamic Facial Expression Recognition with Soft Label-based Data Augmentation2025-06-25Using Vision Language Models to Detect Students' Academic Emotion through Facial Expressions2025-06-12EfficientFER: EfficientNetv2 Based Deep Learning Approach for Facial Expression Recognition2025-06-02TKFNet: Learning Texture Key Factor Driven Feature for Facial Expression Recognition2025-05-15Unsupervised Multiview Contrastive Language-Image Joint Learning with Pseudo-Labeled Prompts Via Vision-Language Model for 3D/4D Facial Expression Recognition2025-05-14Achieving 3D Attention via Triplet Squeeze and Excitation Block2025-05-09Some Optimizers are More Equal: Understanding the Role of Optimizers in Group Fairness2025-04-21