Facial Expression Recognition
Facial expression recognition (FER) aims to automatically identify human emotions from facial images or videos, seeking to improve human-computer interaction and other applications. Current research emphasizes improving accuracy and robustness in challenging conditions (e.g., partial occlusion, low light, diverse demographics), often employing deep convolutional neural networks, transformers, and graph convolutional networks, along with techniques like data augmentation and transfer learning. Significant advancements are being made in model interpretability and generalization across domains, with implications for fields ranging from healthcare and robotics to virtual reality and affective computing.
Papers
D2SP: Dynamic Dual-Stage Purification Framework for Dual Noise Mitigation in Vision-based Affective Recognition
Haoran Wang, Xinji Mai, Zeng Tao, Xuan Tong, Junxiong Lin, Yan Wang, Jiawen Yu, Boyang Wang, Shaoqi Yan, Qing Zhao, Ziheng Zhou, Shuyong Gao, Wenqiang Zhang
Multi-threshold Deep Metric Learning for Facial Expression Recognition
Wenwu Yang, Jinyi Yu, Tuo Chen, Zhenguang Liu, Xun Wang, Jianbing Shen