STEAM-EEG: Spatiotemporal EEG Analysis with Markov Transfer Fields and Attentive CNNs
Journal:
arXiv
Published Date:
Dec 7, 2024
Abstract
Electroencephalogram (EEG) signals play a pivotal role in biomedical research
and clinical applications, including epilepsy diagnosis, sleep disorder
analysis, and brain-computer interfaces. However, the effective analysis and
interpretation of these complex signals often present significant challenges.
This paper presents a novel approach that integrates computer graphics
techniques with biological signal pattern recognition, specifically using
Markov Transfer Fields (MTFs) for EEG time series imaging. The proposed
framework (STEAM-EEG) employs the capabilities of MTFs to capture the
spatiotemporal dynamics of EEG signals, transforming them into visually
informative images. These images are then rendered, visualised, and modelled
using state-of-the-art computer graphics techniques, thereby facilitating
enhanced data exploration, pattern recognition, and decision-making. The code
could be accessed from GitHub.