Speech Emotion Recognition
Speech emotion recognition (SER) aims to automatically identify human emotions from speech, primarily focusing on improving accuracy and robustness across diverse languages and contexts. Current research emphasizes leveraging self-supervised learning models, particularly transformer-based architectures, and exploring techniques like cross-lingual adaptation, multi-modal fusion (combining speech with text or visual data), and efficient model compression for resource-constrained environments. Advances in SER have significant implications for various applications, including mental health monitoring, human-computer interaction, and personalized healthcare, by enabling more natural and empathetic interactions between humans and machines.
Papers
MFSN: Multi-perspective Fusion Search Network For Pre-training Knowledge in Speech Emotion Recognition
Haiyang Sun, Fulin Zhang, Yingying Gao, Zheng Lian, Shilei Zhang, Junlan Feng
Exploring Attention Mechanisms for Multimodal Emotion Recognition in an Emergency Call Center Corpus
Théo Deschamps-Berger, Lori Lamel, Laurence Devillers