Data augmentation for learning predictive models on EEG: a systematic
comparison
- URL: http://arxiv.org/abs/2206.14483v1
- Date: Wed, 29 Jun 2022 09:18:15 GMT
- Title: Data augmentation for learning predictive models on EEG: a systematic
comparison
- Authors: C\'edric Rommel, Joseph Paillard, Thomas Moreau, Alexandre Gramfort
- Abstract summary: deep learning for electroencephalography (EEG) classification tasks has been rapidly growing in the last years.
Deep learning for EEG classification tasks has been limited by the relatively small size of EEG datasets.
Data augmentation has been a key ingredient to obtain state-of-the-art performances across applications such as computer vision or speech.
- Score: 79.84079335042456
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The use of deep learning for electroencephalography (EEG) classification
tasks has been rapidly growing in the last years, yet its application has been
limited by the relatively small size of EEG datasets. Data augmentation, which
consists in artificially increasing the size of the dataset during training,
has been a key ingredient to obtain state-of-the-art performances across
applications such as computer vision or speech. While a few augmentation
transformations for EEG data have been proposed in the literature, their
positive impact on performance across tasks remains elusive. In this work, we
propose a unified and exhaustive analysis of the main existing EEG
augmentations, which are compared in a common experimental setting. Our results
highlight the best data augmentations to consider for sleep stage
classification and motor imagery brain computer interfaces, showing predictive
power improvements greater than 10% in some cases.
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