Literature DB >> 30524056

Inter-subject transfer learning with an end-to-end deep convolutional neural network for EEG-based BCI.

Fatemeh Fahimi1, Zhuo Zhang, Wooi Boon Goh, Tih-Shi Lee, Kai Keng Ang, Cuntai Guan.   

Abstract

OBJECTIVE: Despite the effective application of deep learning (DL) in brain-computer interface (BCI) systems, the successful execution of this technique, especially for inter-subject classification, in cognitive BCI has not been accomplished yet. In this paper, we propose a framework based on the deep convolutional neural network (CNN) to detect the attentive mental state from single-channel raw electroencephalography (EEG) data. APPROACH: We develop an end-to-end deep CNN to decode the attentional information from an EEG time series. We also explore the consequences of input representations on the performance of deep CNN by feeding three different EEG representations into the network. To ensure the practical application of the proposed framework and avoid time-consuming re-training, we perform inter-subject transfer learning techniques as a classification strategy. Eventually, to interpret the learned attentional patterns, we visualize and analyse the network perception of the attention and non-attention classes. MAIN
RESULTS: The average classification accuracy is 79.26%, with only 15.83% of 120 subjects having an accuracy below 70% (a generally accepted threshold for BCI). This is while with the inter-subject approach, it is literally difficult to output high classification accuracy. This end-to-end classification framework surpasses conventional classification methods for attention detection. The visualization results demonstrate that the learned patterns from the raw data are meaningful. SIGNIFICANCE: This framework significantly improves attention detection accuracy with inter-subject classification. Moreover, this study sheds light on the research on end-to-end learning; the proposed network is capable of learning from raw data with the least amount of pre-processing, which in turn eliminates the extensive computational load of time-consuming data preparation and feature extraction.

Entities:  

Mesh:

Year:  2018        PMID: 30524056     DOI: 10.1088/1741-2552/aaf3f6

Source DB:  PubMed          Journal:  J Neural Eng        ISSN: 1741-2552            Impact factor:   5.379


  20 in total

1.  Learning Invariant Representations from EEG via Adversarial Inference.

Authors:  Ozan Özdenizci; Y E Wang; Toshiaki Koike-Akino; Deniz ErdoĞmuŞ
Journal:  IEEE Access       Date:  2020-02-04       Impact factor: 3.367

2.  A probabilistic approach for calibration time reduction in hybrid EEG-fTCD brain-computer interfaces.

Authors:  Aya Khalaf; Murat Akcakaya
Journal:  Biomed Eng Online       Date:  2020-04-16       Impact factor: 2.819

3.  EEG-based texture roughness classification in active tactile exploration with invariant representation learning networks.

Authors:  Ozan Özdenizci; Safaa Eldeeb; Andaç Demir; Deniz Erdoğmuş; Murat Akçakaya
Journal:  Biomed Signal Process Control       Date:  2021-03-05       Impact factor: 3.880

4.  Benefits of deep learning classification of continuous noninvasive brain-computer interface control.

Authors:  James R Stieger; Stephen A Engel; Daniel Suma; Bin He
Journal:  J Neural Eng       Date:  2021-06-09       Impact factor: 5.043

5.  Adaptive neural network classifier for decoding MEG signals.

Authors:  Ivan Zubarev; Rasmus Zetter; Hanna-Leena Halme; Lauri Parkkonen
Journal:  Neuroimage       Date:  2019-05-04       Impact factor: 6.556

Review 6.  Intra- and Inter-subject Variability in EEG-Based Sensorimotor Brain Computer Interface: A Review.

Authors:  Simanto Saha; Mathias Baumert
Journal:  Front Comput Neurosci       Date:  2020-01-21       Impact factor: 2.380

Review 7.  Application of Transfer Learning in EEG Decoding Based on Brain-Computer Interfaces: A Review.

Authors:  Kai Zhang; Guanghua Xu; Xiaowei Zheng; Huanzhong Li; Sicong Zhang; Yunhui Yu; Renghao Liang
Journal:  Sensors (Basel)       Date:  2020-11-05       Impact factor: 3.576

8.  A Novel Transfer Support Matrix Machine for Motor Imagery-Based Brain Computer Interface.

Authors:  Yan Chen; Wenlong Hang; Shuang Liang; Xuejun Liu; Guanglin Li; Qiong Wang; Jing Qin; Kup-Sze Choi
Journal:  Front Neurosci       Date:  2020-11-23       Impact factor: 4.677

Review 9.  A Survey on Deep Learning-Based Short/Zero-Calibration Approaches for EEG-Based Brain-Computer Interfaces.

Authors:  Wonjun Ko; Eunjin Jeon; Seungwoo Jeong; Jaeun Phyo; Heung-Il Suk
Journal:  Front Hum Neurosci       Date:  2021-05-28       Impact factor: 3.169

10.  BENDR: Using Transformers and a Contrastive Self-Supervised Learning Task to Learn From Massive Amounts of EEG Data.

Authors:  Demetres Kostas; Stéphane Aroca-Ouellette; Frank Rudzicz
Journal:  Front Hum Neurosci       Date:  2021-06-23       Impact factor: 3.169

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