Emotion Recognition
Emotion recognition research aims to automatically identify and interpret human emotions from various sources like facial expressions, speech, physiological signals (EEG, fNIRS), and body language. Current research focuses on improving accuracy and robustness across diverse modalities and datasets, employing techniques like multimodal fusion, contrastive learning, and large language models (LLMs) for enhanced feature extraction and classification. This field is significant for its potential applications in healthcare (mental health diagnostics), human-computer interaction, and virtual reality, offering opportunities for personalized experiences and improved well-being.
Papers
A Hybrid End-to-End Spatio-Temporal Attention Neural Network with Graph-Smooth Signals for EEG Emotion Recognition
Shadi Sartipi, Mastaneh Torkamani-Azar, Mujdat Cetin
SeLiNet: Sentiment enriched Lightweight Network for Emotion Recognition in Images
Tuneer Khargonkar, Shwetank Choudhary, Sumit Kumar, Barath Raj KR