Federated deep transfer learning for EEG decoding using multiple BCI tasks

被引:2
|
作者
Wei, Xiaoxi [1 ]
Faisal, A. Aldo [2 ,3 ]
机构
[1] Imperial Coll London, Dept Comp, Brain & Behav Lab, London, England
[2] Imperial Coll London, Brain & Behav Lab, London, England
[3] Univ Bayreuth, Digital Hlth & Data Sci, Bayreuth, Germany
关键词
Deep Learning; Transfer Learning; Domain Adaptation; Brain-Computer-Interfaces (BCI); Electroencephalography (EEG); Privacy-preserving AI; Federated Machine Learning;
D O I
10.1109/NER52421.2023.10123713
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep learning is the state-of-the-art in BCI decoding. However, it is very data-hungry and training decoders requires pooling data from multiple sources. EEG data from various sources decrease the decoding 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 with different BCI tasks, which has been thought to limit their reusability. Here, we demonstrate a federated deep transfer learning technique, the Multidataset Federated Separate-Common-Separate Network (MFSCSN) 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 from different imagery tasks (e.g. some data sets with hands and feet, vs others with single hands and tongue, etc). Therefore, by introducing privacypreserving 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.
引用
收藏
页数:4
相关论文
共 50 条
  • [21] I see artifacts: ICA-based EEG artifact removal does not improve deep network decoding across three BCI tasks
    Kang, Taeho
    Chen, Yiyu
    Wallraven, Christian
    JOURNAL OF NEURAL ENGINEERING, 2024, 21 (06)
  • [22] Empirical comparison of deep learning methods for EEG decoding
    de Oliveira, Iago Henrique
    Rodrigues, Abner Cardoso
    FRONTIERS IN NEUROSCIENCE, 2023, 16
  • [23] Latent alignment in deep learning models for EEG decoding
    Bakas, Stylianos
    Ludwig, Siegfried
    Adamos, Dimitrios A.
    Laskaris, Nikolaos
    Panagakis, Yannis
    Zafeiriou, Stefanos
    JOURNAL OF NEURAL ENGINEERING, 2025, 22 (01)
  • [24] Identification of multiple-tasks-induced-EEG by heuristic BCI with learning type Fuzzy-Template-Matching method
    Oda, Teruo
    Kudoh, Suguru N.
    2017 JOINT 17TH WORLD CONGRESS OF INTERNATIONAL FUZZY SYSTEMS ASSOCIATION AND 9TH INTERNATIONAL CONFERENCE ON SOFT COMPUTING AND INTELLIGENT SYSTEMS (IFSA-SCIS), 2017,
  • [25] Classification of motor imagery EEG using deep learning increases performance in inefficient BCI users
    Tibrewal, Navneet
    Leeuwis, Nikki
    Alimardani, Maryam
    PLOS ONE, 2022, 17 (07):
  • [26] PTSD Diagnosis using Deep Transfer Learning: an EEG Study
    Beykmohammadi, Arman
    Ghanbari, Zahra
    Moradi, Mohammad Hassan
    2022 29TH NATIONAL AND 7TH INTERNATIONAL IRANIAN CONFERENCE ON BIOMEDICAL ENGINEERING, ICBME, 2022, : 9 - 13
  • [27] TRANSFER LEARNING FOR EEG BASED BCI USING LEARN plus plus .NSE AND MUTUAL INFORMATION
    Sybeldon, Matthew
    Schmit, Lukas
    Sejdic, Ervin
    Akcakaya, Murat
    2017 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2017, : 2632 - 2636
  • [28] Deep learning for electroencephalogram (EEG) classification tasks: a review
    Craik, Alexander
    He, Yongtian
    Contreras-Vidal, Jose L.
    JOURNAL OF NEURAL ENGINEERING, 2019, 16 (03)
  • [29] Decoding Imagined Speech Based on Deep Metric Learning for Intuitive BCI Communication
    Lee, Dong-Yeon
    Lee, Minji
    Lee, Seong-Whan
    IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2021, 29 : 1363 - 1374
  • [30] Primary color decoding using deep learning on source reconstructed EEG signal responses
    Flotaker, Simen
    Soler, Andres
    Molinas, Marta
    2023 45TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE & BIOLOGY SOCIETY, EMBC, 2023,