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  5. Federated deep transfer learning for EEG decoding using multiple BCI tasks
 
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Federated deep transfer learning for EEG decoding using multiple BCI tasks
File(s)
Federated deep transfer learning for EEG decoding using multiple BCI tasks (preprint).pdf (639.54 KB)
Accepted version
Author(s)
Wei, Xiaoxi
Faisal, A Aldo
Type
Conference Paper
Abstract
Deep learning has been successful in BCI decoding. However, it is very data-hungry and requires pooling data from multiple sources. EEG data from various sources decrease thedecoding performance due to negative transfer [1]. Recently, transfer learning for EEG decoding has been suggested as a
remedy [2], [3] and become subject to recent BCI competitions (e.g. BEETL [4]), but there are two complications in combining data from many subjects. First, privacy is not protected as highly personal brain data needs to be shared (and copied across increasingly tight information governance boundaries). Moreover, BCI data are collected from different sources and are often based on different BCI tasks, which has been thought to limit their
reusability. Here, we demonstrate a federated deep transfer learning technique, the Multi-dataset Federated Separate-Common-Separate Network (MF-SCSN) based on our previous work of SCSN [1], which integrates privacy-preserving properties into deep transfer learning to utilise data sets with different tasks. This framework trains a BCI decoder using different source data sets obtained from different imagery tasks (e.g. some data sets with hands and feet, vs others with single hands and tongue, etc). Therefore, by introducing privacy-preserving transfer learning techniques, we unlock the reusability and scalability of existing BCI data sets. We evaluated our federated transfer learning method on the NeurIPS 2021 BEETL competition BCI task. The proposed architecture outperformed the baseline decoder by 3%. Moreover, compared with the baseline and other transfer learning
algorithms, our method protects the privacy of the brain data from different data centres.
Date Issued
2023-05-19
Date Acceptance
2022-12-21
Citation
International IEEE/EMBS Conference on Neural Engineering, NER, 2023
URI
http://hdl.handle.net/10044/1/102723
DOI
https://www.dx.doi.org/10.1109/NER52421.2023.10123713
ISSN
1948-3554
Publisher
IEEE
Journal / Book Title
International IEEE/EMBS Conference on Neural Engineering, NER
Copyright Statement
Copyright © 2023 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.
Source
11th International IEEE/EMBS Conference on Neural Engineering (NER 2023)
Publication Status
Published
Start Date
2023-04-25
Finish Date
2023-04-27
Coverage Spatial
Baltimore, MD, USA
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