GET: A Generative EEG Transformer for Continuous Context-Based Neural Signals
Omair Ali, Muhammad Saif-ur-Rehman, Marita Metzler, Tobias, Glasmachers, Ioannis Iossifidis, Christian Klaes

TL;DR
This paper introduces GET, a transformer-based generative model for EEG signals, which can produce continuous, contextually relevant neural data to advance brain-computer interfaces and related applications.
Contribution
The paper presents the first transformer architecture tailored for EEG signal generation, pre-trained on diverse datasets to produce high-fidelity, continuous neural signals with preserved context.
Findings
GET faithfully reproduces EEG frequency spectra
It robustly generates continuous neural signals
Pre-training on diverse datasets enhances signal fidelity
Abstract
Generating continuous electroencephalography (EEG) signals through advanced artificial neural networks presents a novel opportunity to enhance brain-computer interface (BCI) technology. This capability has the potential to significantly enhance applications ranging from simulating dynamic brain activity and data augmentation to improving real-time epilepsy detection and BCI inference. By harnessing generative transformer neural networks, specifically designed for EEG signal generation, we can revolutionize the interpretation and interaction with neural data. Generative AI has demonstrated significant success across various domains, from natural language processing (NLP) and computer vision to content creation in visual arts and music. It distinguishes itself by using large-scale datasets to construct context windows during pre-training, a technique that has proven particularly effective…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
MethodsAttention Is All You Need · Softmax · Layer Normalization · Linear Layer · Position-Wise Feed-Forward Layer · Byte Pair Encoding · Label Smoothing · Adam · Residual Connection · Multi-Head Attention
