EEG Classification
EEG classification aims to categorize brain activity patterns recorded via electroencephalography, primarily for applications in brain-computer interfaces and medical diagnostics. Current research emphasizes improving classification accuracy and generalizability across individuals by employing advanced deep learning architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), transformers, and graph neural networks (GNNs), often combined with innovative data augmentation and preprocessing techniques. These advancements hold significant promise for enhancing the reliability and clinical utility of EEG-based systems, leading to improved diagnostic tools and more effective brain-computer interfaces.
Papers
EEGMamba: Bidirectional State Space Model with Mixture of Experts for EEG Multi-task Classification
Yiyu Gui, MingZhi Chen, Yuqi Su, Guibo Luo, Yuchao Yang
Improving EEG Classification Through Randomly Reassembling Original and Generated Data with Transformer-based Diffusion Models
Mingzhi Chen, Yiyu Gui, Yuqi Su, Yuesheng Zhu, Guibo Luo, Yuchao Yang
Integrating LLM, EEG, and Eye-Tracking Biomarker Analysis for Word-Level Neural State Classification in Semantic Inference Reading Comprehension
Yuhong Zhang, Qin Li, Sujal Nahata, Tasnia Jamal, Shih-kuen Cheng, Gert Cauwenberghs, Tzyy-Ping Jung
GNN4EEG: A Benchmark and Toolkit for Electroencephalography Classification with Graph Neural Network
Kaiyuan Zhang, Ziyi Ye, Qingyao Ai, Xiaohui Xie, Yiqun Liu