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

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          Abstract

          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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          Most cited references43

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          A review of classification algorithms for EEG-based brain–computer interfaces

          In this paper we review classification algorithms used to design brain-computer interface (BCI) systems based on electroencephalography (EEG). We briefly present the commonly employed algorithms and describe their critical properties. Based on the literature, we compare them in terms of performance and provide guidelines to choose the suitable classification algorithm(s) for a specific BCI.
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            Deep learning with convolutional neural networks for EEG decoding and visualization

            Abstract Deep learning with convolutional neural networks (deep ConvNets) has revolutionized computer vision through end‐to‐end learning, that is, learning from the raw data. There is increasing interest in using deep ConvNets for end‐to‐end EEG analysis, but a better understanding of how to design and train ConvNets for end‐to‐end EEG decoding and how to visualize the informative EEG features the ConvNets learn is still needed. Here, we studied deep ConvNets with a range of different architectures, designed for decoding imagined or executed tasks from raw EEG. Our results show that recent advances from the machine learning field, including batch normalization and exponential linear units, together with a cropped training strategy, boosted the deep ConvNets decoding performance, reaching at least as good performance as the widely used filter bank common spatial patterns (FBCSP) algorithm (mean decoding accuracies 82.1% FBCSP, 84.0% deep ConvNets). While FBCSP is designed to use spectral power modulations, the features used by ConvNets are not fixed a priori. Our novel methods for visualizing the learned features demonstrated that ConvNets indeed learned to use spectral power modulations in the alpha, beta, and high gamma frequencies, and proved useful for spatially mapping the learned features by revealing the topography of the causal contributions of features in different frequency bands to the decoding decision. Our study thus shows how to design and train ConvNets to decode task‐related information from the raw EEG without handcrafted features and highlights the potential of deep ConvNets combined with advanced visualization techniques for EEG‐based brain mapping. Hum Brain Mapp 38:5391–5420, 2017. © 2017 Wiley Periodicals, Inc.
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              EEGNet: a compact convolutional neural network for EEG-based brain–computer interfaces

              Brain-computer interfaces (BCI) enable direct communication with a computer, using neural activity as the control signal. This neural signal is generally chosen from a variety of well-studied electroencephalogram (EEG) signals. For a given BCI paradigm, feature extractors and classifiers are tailored to the distinct characteristics of its expected EEG control signal, limiting its application to that specific signal. Convolutional neural networks (CNNs), which have been used in computer vision and speech recognition to perform automatic feature extraction and classification, have successfully been applied to EEG-based BCIs; however, they have mainly been applied to single BCI paradigms and thus it remains unclear how these architectures generalize to other paradigms. Here, we ask if we can design a single CNN architecture to accurately classify EEG signals from different BCI paradigms, while simultaneously being as compact as possible.
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                Author and article information

                Contributors
                Journal
                Front Neurosci
                Front Neurosci
                Front. Neurosci.
                Frontiers in Neuroscience
                Frontiers Media S.A.
                1662-4548
                1662-453X
                26 November 2019
                2019
                : 13
                : 1275
                Affiliations
                [1] 1Key Laboratory of Intelligent Perception and Image Understanding of Ministry of Education, School of Artificial Intelligence, Xidian University , Xi’an, China
                [2] 2Engineering Research Center of Molecular and Neuroimaging, Ministry of Education, School of Life Sciences and Technology, Xidian University , Xi’an, China
                Author notes

                Edited by: Feng Liu, Tianjin Medical University General Hospital, China

                Reviewed by: Tao Zhang, University of Electronic Science and Technology of China, China; Li Dong, University of Electronic Science and Technology of China, China

                *Correspondence: Yi Niu, niuyi@ 123456mail.xidian.edu.cn

                This article was submitted to Brain Imaging Methods, a section of the journal Frontiers in Neuroscience

                Article
                10.3389/fnins.2019.01275
                6901997
                31849587
                942dcac1-0dee-4225-8c98-8f001ef9881d
                Copyright © 2019 Wu, Niu, Li, Li, Fu, Shi and Dong.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 23 August 2019
                : 11 November 2019
                Page count
                Figures: 3, Tables: 6, Equations: 1, References: 52, Pages: 9, Words: 0
                Funding
                Funded by: National Natural Science Foundation of China 10.13039/501100001809
                Award ID: 61672404
                Award ID: 61632019
                Award ID: 61751310
                Award ID: 61875157
                Award ID: 61572387
                Funded by: National Defense Basic Scientific Research Program of China 10.13039/501100012335
                Award ID: JCKY2017204B102
                Funded by: Fundamental Research Funds for the Central Universities 10.13039/501100012226
                Award ID: JC1904
                Award ID: JBG160228
                Award ID: JBG160213
                Categories
                Neuroscience
                Original Research

                Neurosciences
                eeg,bci,motor imagery,deep learning,convolutional neural networks
                Neurosciences
                eeg, bci, motor imagery, deep learning, convolutional neural networks

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