Real-time Face Emotion Recognition Using Deep Learning with Two-Tier Architectures for Age and Gender

الملخص

The automated recognition of human emotion, age, and gender from facial images is a significant area of research with applications in fields like security, healthcare, and human-computer interaction. While numerous systems exist for these tasks, their accuracy often falls short of satisfactory levels, and identifying robust methods remains a challenge. This study proposes a novel deep learning approach using a two-tier architecture that combines a Convolutional Neural Network (CNN) for emotion recognition with a Local-Deep Neural Network (LDNN) for age and gender classification. The model was trained and tested on the AffectNet and UTKFace datasets, demonstrating high efficacy in both training and real-time modes. The system successfully identifies six basic emotions (happy, sad, anger, fear, disgust, surprise), eight age ranges, and two genders. Our results show a significant improvement in emotion recognition accuracy over preceding studies, validating the effectiveness of the proposed architecture.

PDF (الإنجليزية)

PDF (الإنجليزية)

DOI

https://doi.org/10.33899/jmcc.2025.9

Pages

33-40

الكلمات المفتاحية

Convolutional Neural Network, Local-Deep Neural Network, Deep Learning, Face Recognition

الفئات

كيفية الاقتباس

Al-Obaidy, D., & Sarah Alissa Mohd Dali. (2025). Real-time Face Emotion Recognition Using Deep Learning with Two-Tier Architectures for Age and Gender. Journal of Methodical Computing and Communications , 2025, 33-40. https://doi.org/10.33899/jmcc.2025.9