MIDNN- a classification approach for the EEG based motor imagery tasks using deep neural network

被引:0
|
作者
Smita Tiwari
Shivani Goel
Arpit Bhardwaj
机构
[1] Bennett University,Computer Science Engineering
来源
Applied Intelligence | 2022年 / 52卷
关键词
Deep neural network; Classification; Motor imagery; EEG signals; Neural network; Power spectral density; Band power;
D O I
暂无
中图分类号
学科分类号
摘要
In recent times, Motor Imagery (MI) tasks have gained great attraction among researchers in the field of Brain-Computer Interface (BCI). The MI tasks are the core field of the human brain in which the person imagines the movement of the body parts without performing actual movement of the body. MI tasks cause the activation of lakhs of neurons in the brain to interact with each other. The activation of the neurons generates electrical signals that can be captured through electroencephalogram (EEG) devices. The MI-EEG-based signals can move the external devices such as a wheelchair, moving cursors, etc., and hence, are very helpful to design and develop personal assistants for the disabled person for interaction and communication to the outside world. In this paper, MI-EEG data for left-hand(LH) and right-hand(RH) movements are recorded using a multi-channel EEG device. Further, a Deep Neural Network (DNN) model (MIDNN) is proposed for the binary-class classification of the collected dataset. The performance of the proposed model has been tested on the BCI benchmark dataset BCI competition III V dataset for LH and RH MI tasks.The fifth order low pass Butterworth filter is used to denoise the raw signals and then decomposed into six frequency sub-bands of (0.5–4) Hz, (4–8) Hz, (8–12) Hz, (12–16) Hz, (16–24) Hz, and (24–40) Hz using Butterworth bandpass filter of same order. The sub-bands are used to extract features from MI-EEG signals of LH and RH movement using welch power spectral density (PSD). The accuracy obtained by the MIDNN model is around 70% on the local dataset and 72.51% on the BCI dataset using PSD as features from each channel for classification of LH and RH tasks. To further improve the performance of the model, the spectral features from the estimated PSD of each of the six sub-band are obtained in the form of band power. The accuracy obtained by the same MIDNN model using band power as features is 88.89% on the local dataset and 82.48% on the V dataset of BCI competition III. The proposed MIDNN model acheived a significant increase in classification accuracy by 13.7% and 26.9% on BCI and Emotiv dataset respectively.
引用
收藏
页码:4824 / 4843
页数:19
相关论文
共 50 条
  • [41] Single-trial EEG classification of motor imagery using deep convolutional neural networks
    Tang, Zhichuan
    Li, Chao
    Sun, Shouqian
    [J]. OPTIK, 2017, 130 : 11 - 18
  • [42] MOTOR IMAGERY FOR EEG BIOMETRICS USING CONVOLUTIONAL NEURAL NETWORK
    Das, Rig
    Maiorana, Emanuele
    Campisi, Patrizio
    [J]. 2018 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2018, : 2062 - 2066
  • [43] A motor imagery EEG signal classification algorithm based on recurrence plot convolution neural network
    Meng, XianJia
    Qiu, Shi
    Wan, Shaohua
    Cheng, Keyang
    Cui, Lei
    [J]. PATTERN RECOGNITION LETTERS, 2021, 146 : 134 - 141
  • [44] A novel classification method for EEG-based motor imagery with narrow band spatial filters and deep convolutional neural network
    Senwei Xu
    Li Zhu
    Wanzeng Kong
    Yong Peng
    Hua Hu
    Jianting Cao
    [J]. Cognitive Neurodynamics, 2022, 16 : 379 - 389
  • [45] A novel classification method for EEG-based motor imagery with narrow band spatial filters and deep convolutional neural network
    Xu, Senwei
    Zhu, Li
    Kong, Wanzeng
    Peng, Yong
    Hu, Hua
    Cao, Jianting
    [J]. COGNITIVE NEURODYNAMICS, 2022, 16 (02) : 379 - 389
  • [46] A Novel Approach to Classify Motor-Imagery EEG with Convolutional Neural Network Using Network Measures
    Mousapour, Leila
    Agah, Fateme
    Salari, Soorena
    Zare, Marzieh
    [J]. 2018 4TH IRANIAN CONFERENCE ON SIGNAL PROCESSING AND INTELLIGENT SYSTEMS (ICSPIS), 2018, : 43 - 47
  • [47] EEG Classification of Motor Imagery Using a Novel Deep Learning Framework
    Dai, Mengxi
    Zheng, Dezhi
    Na, Rui
    Wang, Shuai
    Zhang, Shuailei
    [J]. SENSORS, 2019, 19 (03)
  • [48] SincMSNet: a Sinc filter convolutional neural network for EEG motor imagery classification
    Liu, Ke
    Yang, Mingzhao
    Xing, Xin
    Yu, Zhuliang
    Wu, Wei
    [J]. JOURNAL OF NEURAL ENGINEERING, 2023, 20 (05)
  • [49] Multimodal Multitask Neural Network for Motor Imagery Classification With EEG and fNIRS Signals
    He, Qun
    Feng, Lufeng
    Jiang, Guoqian
    Xie, Ping
    [J]. IEEE SENSORS JOURNAL, 2022, 22 (21) : 20695 - 20706
  • [50] A Deep Learning Method for Classification of EEG Data Based on Motor Imagery
    An, Xiu
    Kuang, Deping
    Guo, Xiaojiao
    Zhao, Yilu
    He, Lianghua
    [J]. INTELLIGENT COMPUTING IN BIOINFORMATICS, 2014, 8590 : 203 - 210