4.7 Article

A Hybrid-Domain Deep Learning-Based BCI For Discriminating Hand Motion Planning From EEG Sources

Journal

INTERNATIONAL JOURNAL OF NEURAL SYSTEMS
Volume 31, Issue 9, Pages -

Publisher

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0129065721500386

Keywords

Deep learning; brain-computer interface; electroencephalography; beamforming; wavelet transform; feature fusion

Funding

  1. POR Calabria FESR FSE [C39B18000080002]
  2. UK Engineering and Physical Sciences Research Council (EPSRC) [EP/M026981/1, EP/T021063/1, EP/T024917/1]
  3. PON 2014-2020, COGITO project Grant [ARS01_00836]

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In this paper, a hybrid-domain deep learning approach is proposed to decode hand movement preparation phases from EEG recordings, achieving a significant performance improvement compared to temporal-only and time-frequency-only-based methods, with an average accuracy of 76.21 +/- 3.77%. By combining temporal and time-frequency information using two CNNs and a standard multi-layer perceptron, a better classification result is achieved.
In this paper, a hybrid-domain deep learning (DL)-based neural system is proposed to decode hand movement preparation phases from electroencephalographic (EEG) recordings. The system exploits information extracted from the temporal-domain and time-frequency-domain, as part of a hybrid strategy, to discriminate the temporal windows (i.e. EEG epochs) preceding hand sub-movements (open/close) and the resting state. To this end, for each EEG epoch, the associated cortical source signals in the motor cortex and the corresponding time-frequency (TF) maps are estimated via beamforming and Continuous Wavelet Transform (CWT), respectively. Two Convolutional Neural Networks (CNNs) are designed: specifically, the first CNN is trained over a dataset of temporal (T) data (i.e. EEG sources), and is referred to as T-CNN; the second CNN is trained over a dataset of TF data (i.e. TF-maps of EEG sources), and is referred to as TF-CNN. Two sets of features denoted as T-features and TF-features, extracted from T-CNN and TF-CNN, respectively, are concatenated in a single features vector (denoted as TTF-features vector) which is used as input to a standard multi-layer perceptron for classification purposes. Experimental results show a significant performance improvement of our proposed hybrid-domain DL approach as compared to temporal-only and time-frequency-only-based benchmark approaches, achieving an average accuracy of 76.21 +/- 3.77%.

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