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EEG-GAN: Generative adversarial networks for electroencephalograhic (EEG) brain signals

2 Pith papers cite this work. Polarity classification is still indexing.

2 Pith papers citing it
abstract

Generative adversarial networks (GANs) are recently highly successful in generative applications involving images and start being applied to time series data. Here we describe EEG-GAN as a framework to generate electroencephalographic (EEG) brain signals. We introduce a modification to the improved training of Wasserstein GANs to stabilize training and investigate a range of architectural choices critical for time series generation (most notably up- and down-sampling). For evaluation we consider and compare different metrics such as Inception score, Frechet inception distance and sliced Wasserstein distance, together showing that our EEG-GAN framework generated naturalistic EEG examples. It thus opens up a range of new generative application scenarios in the neuroscientific and neurological context, such as data augmentation in brain-computer interfacing tasks, EEG super-sampling, or restoration of corrupted data segments. The possibility to generate signals of a certain class and/or with specific properties may also open a new avenue for research into the underlying structure of brain signals.

citation-role summary

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citation-polarity summary

fields

cs.CV 1 cs.LG 1

years

2026 2

roles

baseline 1

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baseline 1

representative citing papers

Let EEG Models Learn EEG

cs.CV · 2026-05-20 · unverdicted · novelty 7.0

JET is a conditional flow matching framework that generates EEG as continuous raw sequences with added constraints for spectral and temporal properties, achieving over 40% lower TS-FID than prior discrete denoising methods on three benchmarks.

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Showing 2 of 2 citing papers.

  • Let EEG Models Learn EEG cs.CV · 2026-05-20 · unverdicted · none · ref 29 · internal anchor

    JET is a conditional flow matching framework that generates EEG as continuous raw sequences with added constraints for spectral and temporal properties, achieving over 40% lower TS-FID than prior discrete denoising methods on three benchmarks.

  • Synthetic Data Generation for Brain-Computer Interfaces: Overview, Benchmarking, and Future Directions cs.LG · 2026-03-11 · accept · none · ref 38 · internal anchor

    A survey that taxonomizes synthetic brain signal generation methods into four categories, benchmarks them on motor imagery, seizure detection, SSVEP, and auditory attention tasks, and outlines evaluation principles and future directions for data-efficient BCIs.