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
Robust Emotion Recognition in Context Debiasing
Dingkang Yang, Kun Yang, Mingcheng Li, Shunli Wang, Shuaibing Wang, Lihua Zhang
GPT as Psychologist? Preliminary Evaluations for GPT-4V on Visual Affective Computing
Hao Lu, Xuesong Niu, Jiyao Wang, Yin Wang, Qingyong Hu, Jiaqi Tang, Yuting Zhang, Kaishen Yuan, Bin Huang, Zitong Yu, Dengbo He, Shuiguang Deng, Hao Chen, Yingcong Chen, Shiguang Shan
Emotional Voice Messages (EMOVOME) database: emotion recognition in spontaneous voice messages
Lucía Gómez Zaragozá, Rocío del Amor, Elena Parra Vargas, Valery Naranjo, Mariano Alcañiz Raya, Javier Marín-Morales
Curriculum Learning Meets Directed Acyclic Graph for Multimodal Emotion Recognition
Cam-Van Thi Nguyen, Cao-Bach Nguyen, Quang-Thuy Ha, Duc-Trong Le
EmoBench: Evaluating the Emotional Intelligence of Large Language Models
Sahand Sabour, Siyang Liu, Zheyuan Zhang, June M. Liu, Jinfeng Zhou, Alvionna S. Sunaryo, Juanzi Li, Tatia M. C. Lee, Rada Mihalcea, Minlie Huang
Multimodal Emotion Recognition from Raw Audio with Sinc-convolution
Xiaohui Zhang, Wenjie Fu, Mangui Liang
FindingEmo: An Image Dataset for Emotion Recognition in the Wild
Laurent Mertens, Elahe' Yargholi, Hans Op de Beeck, Jan Van den Stock, Joost Vennekens
Graph Neural Networks in EEG-based Emotion Recognition: A Survey
Chenyu Liu, Xinliang Zhou, Yihao Wu, Ruizhi Yang, Zhongruo Wang, Liming Zhai, Ziyu Jia, Yang Liu