EEG Signal
Electroencephalography (EEG) signals, reflecting brain electrical activity, are central to understanding brain function and developing brain-computer interfaces (BCIs). Current research focuses on improving signal processing techniques, particularly artifact removal using methods like Empirical Mode Decomposition combined with machine learning, and developing advanced decoding methods using deep learning architectures such as transformers, variational autoencoders, and diffusion models for tasks ranging from visual decoding to emotion recognition and even imagined speech reconstruction. These advancements hold significant promise for improving the accuracy and reliability of EEG-based diagnostics, BCIs, and neuroergonomic studies, ultimately impacting healthcare, assistive technologies, and our understanding of the brain.
Papers
Characterizing TMS-EEG perturbation indexes using signal energy: initial study on Alzheimer's Disease classification
Alexandra-Maria Tautan, Elias Casula, Ilaria Borghi, Michele Maiella, Sonia Bonni, Marilena Minei, Martina Assogna, Bogdan Ionescu, Giacomo Koch, Emiliano Santarnecchi
Multichannel Synthetic Preictal EEG Signals to Enhance the Prediction of Epileptic Seizures
Yankun Xu, Jie Yang, Mohamad Sawan