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Deep learning with convolutional neural networks for EEG decoding and visualization
Deep learning with convolutional neural networks (deep ConvNets) has revolutionized computer vision through end‐to‐end learning, that is, learning from the raw data. There is increasing interest in using deep ConvNets for end‐to‐end EEG analysis, but a better understanding of how to design and train...
Autores principales: | , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
John Wiley and Sons Inc.
2017
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5655781/ https://www.ncbi.nlm.nih.gov/pubmed/28782865 http://dx.doi.org/10.1002/hbm.23730 |
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author | Schirrmeister, Robin Tibor Springenberg, Jost Tobias Fiederer, Lukas Dominique Josef Glasstetter, Martin Eggensperger, Katharina Tangermann, Michael Hutter, Frank Burgard, Wolfram Ball, Tonio |
author_facet | Schirrmeister, Robin Tibor Springenberg, Jost Tobias Fiederer, Lukas Dominique Josef Glasstetter, Martin Eggensperger, Katharina Tangermann, Michael Hutter, Frank Burgard, Wolfram Ball, Tonio |
author_sort | Schirrmeister, Robin Tibor |
collection | PubMed |
description | Deep learning with convolutional neural networks (deep ConvNets) has revolutionized computer vision through end‐to‐end learning, that is, learning from the raw data. There is increasing interest in using deep ConvNets for end‐to‐end EEG analysis, but a better understanding of how to design and train ConvNets for end‐to‐end EEG decoding and how to visualize the informative EEG features the ConvNets learn is still needed. Here, we studied deep ConvNets with a range of different architectures, designed for decoding imagined or executed tasks from raw EEG. Our results show that recent advances from the machine learning field, including batch normalization and exponential linear units, together with a cropped training strategy, boosted the deep ConvNets decoding performance, reaching at least as good performance as the widely used filter bank common spatial patterns (FBCSP) algorithm (mean decoding accuracies 82.1% FBCSP, 84.0% deep ConvNets). While FBCSP is designed to use spectral power modulations, the features used by ConvNets are not fixed a priori. Our novel methods for visualizing the learned features demonstrated that ConvNets indeed learned to use spectral power modulations in the alpha, beta, and high gamma frequencies, and proved useful for spatially mapping the learned features by revealing the topography of the causal contributions of features in different frequency bands to the decoding decision. Our study thus shows how to design and train ConvNets to decode task‐related information from the raw EEG without handcrafted features and highlights the potential of deep ConvNets combined with advanced visualization techniques for EEG‐based brain mapping. Hum Brain Mapp 38:5391–5420, 2017. © 2017 Wiley Periodicals, Inc. |
format | Online Article Text |
id | pubmed-5655781 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2017 |
publisher | John Wiley and Sons Inc. |
record_format | MEDLINE/PubMed |
spelling | pubmed-56557812017-11-01 Deep learning with convolutional neural networks for EEG decoding and visualization Schirrmeister, Robin Tibor Springenberg, Jost Tobias Fiederer, Lukas Dominique Josef Glasstetter, Martin Eggensperger, Katharina Tangermann, Michael Hutter, Frank Burgard, Wolfram Ball, Tonio Hum Brain Mapp Research Articles Deep learning with convolutional neural networks (deep ConvNets) has revolutionized computer vision through end‐to‐end learning, that is, learning from the raw data. There is increasing interest in using deep ConvNets for end‐to‐end EEG analysis, but a better understanding of how to design and train ConvNets for end‐to‐end EEG decoding and how to visualize the informative EEG features the ConvNets learn is still needed. Here, we studied deep ConvNets with a range of different architectures, designed for decoding imagined or executed tasks from raw EEG. Our results show that recent advances from the machine learning field, including batch normalization and exponential linear units, together with a cropped training strategy, boosted the deep ConvNets decoding performance, reaching at least as good performance as the widely used filter bank common spatial patterns (FBCSP) algorithm (mean decoding accuracies 82.1% FBCSP, 84.0% deep ConvNets). While FBCSP is designed to use spectral power modulations, the features used by ConvNets are not fixed a priori. Our novel methods for visualizing the learned features demonstrated that ConvNets indeed learned to use spectral power modulations in the alpha, beta, and high gamma frequencies, and proved useful for spatially mapping the learned features by revealing the topography of the causal contributions of features in different frequency bands to the decoding decision. Our study thus shows how to design and train ConvNets to decode task‐related information from the raw EEG without handcrafted features and highlights the potential of deep ConvNets combined with advanced visualization techniques for EEG‐based brain mapping. Hum Brain Mapp 38:5391–5420, 2017. © 2017 Wiley Periodicals, Inc. John Wiley and Sons Inc. 2017-08-07 /pmc/articles/PMC5655781/ /pubmed/28782865 http://dx.doi.org/10.1002/hbm.23730 Text en © 2017 The Authors Human Brain Mapping Published by Wiley Periodicals, Inc. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited. |
spellingShingle | Research Articles Schirrmeister, Robin Tibor Springenberg, Jost Tobias Fiederer, Lukas Dominique Josef Glasstetter, Martin Eggensperger, Katharina Tangermann, Michael Hutter, Frank Burgard, Wolfram Ball, Tonio Deep learning with convolutional neural networks for EEG decoding and visualization |
title | Deep learning with convolutional neural networks for EEG decoding and visualization |
title_full | Deep learning with convolutional neural networks for EEG decoding and visualization |
title_fullStr | Deep learning with convolutional neural networks for EEG decoding and visualization |
title_full_unstemmed | Deep learning with convolutional neural networks for EEG decoding and visualization |
title_short | Deep learning with convolutional neural networks for EEG decoding and visualization |
title_sort | deep learning with convolutional neural networks for eeg decoding and visualization |
topic | Research Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5655781/ https://www.ncbi.nlm.nih.gov/pubmed/28782865 http://dx.doi.org/10.1002/hbm.23730 |
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