4.6 Article

A Parallel Multiscale Filter Bank Convolutional Neural Networks for Motor Imagery EEG Classification

Journal

FRONTIERS IN NEUROSCIENCE
Volume 13, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fnins.2019.01275

Keywords

EEG; BCI; motor imagery; deep learning; convolutional neural networks

Categories

Funding

  1. NSFC [61672404, 61632019, 61751310, 61875157, 61572387]
  2. National Key Research and Development Project [2018YFB2202400]
  3. National Defense Basic Scientific Research Program of China [JCKY2017204B102]
  4. Joint Fund of Ministry of Education of China [6141A020223]
  5. Fundamental Research Funds of the Central Universities of China [JC1904, JBG160228, JBG160213]
  6. Natural Science Basic Research Plan in Shaanxi Province of China [2016ZDJC-08]

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Objective Electroencephalogram (EEG) based brain-computer interfaces (BCI) in motor imagery (MI) have developed rapidly in recent years. A reliable feature extraction method is essential because of a low signal-to-noise ratio (SNR) and time-dependent covariates of EEG signals. Because of efficient application in various fields, deep learning has been adopted in EEG signal processing and has obtained competitive results compared with the traditional methods. However, designing and training an end-to-end network to fully extract potential features from EEG signals remains a challenge in MI. Approach In this study, we propose a parallel multiscale filter bank convolutional neural network (MSFBCNN) for MI classification. We introduce a layered end-to-end network structure, in which a feature-extraction network is used to extract temporal and spatial features. To enhance the transfer learning ability, we propose a network initialization and fine-tuning strategy to train an individual model for inter-subject classification on small datasets. We compare our MSFBCNN with the state-of-the-art approaches on open datasets. Results The proposed method has a higher accuracy than the baselines in intra-subject classification. In addition, the transfer learning experiments indicate that our network can build an individual model and obtain acceptable results in inter-subject classification. The results suggest that the proposed network has superior performance, robustness, and transfer learning ability.

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