Multi-Class Classification Methods for EEG Signals of Lower-Limb Rehabilitation Movements

被引:0
作者
Ma, Shuangling [1 ]
Situ, Zijie [1 ]
Peng, Xiaobo [1 ]
Li, Zhangyang [1 ]
Huang, Ying [2 ]
机构
[1] Shenzhen Univ, Coll Mechatron & Control Engn, Shenzhen 518060, Peoples R China
[2] Shenzhen Univ, Coll Life Sci & Oceanog, Shenzhen Key Lab Marine Bioresources & Ecol, Shenzhen 518060, Peoples R China
关键词
MI-EEG signals; four-class classification; common spatial pattern; convolutional neural network; 3D EEG-CNN;
D O I
10.3390/biomimetics10070452
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Brain-Computer Interfaces (BCIs) enable direct communication between the brain and external devices by decoding motor intentions from EEG signals. However, the existing multi-class classification methods for motor imagery EEG (MI-EEG) signals are hindered by low signal quality and limited accuracy, restricting their practical application. This study focuses on rehabilitation training scenarios, aiming to capture the motor intentions of patients with partial or complete motor impairments (such as stroke survivors) and provide feedforward control commands for exoskeletons. This study developed an EEG acquisition protocol specifically for use with lower-limb rehabilitation motor imagery (MI). It systematically explored preprocessing techniques, feature extraction strategies, and multi-classification algorithms for multi-task MI-EEG signals. A novel 3D EEG convolutional neural network (3D EEG-CNN) that integrates time/frequency features is proposed. Evaluations on a self-collected dataset demonstrated that the proposed model achieved a peak classification accuracy of 66.32%, substantially outperforming conventional approaches and demonstrating notable progress in the multi-class classification of lower-limb motor imagery tasks.
引用
收藏
页数:25
相关论文
共 29 条
[1]   Automated EEG-based screening of depression using deep convolutional neural network [J].
Acharya, U. Rajendra ;
Oh, Shu Lih ;
Hagiwara, Yuki ;
Tan, Jen Hong ;
Adeli, Hojjat ;
Subha, D. P. .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2018, 161 :103-113
[2]   CNN models for EEG motor imagery signal classification [J].
Alnaanah, Mahmoud ;
Wahdow, Moutz ;
Alrashdan, Mohd .
SIGNAL IMAGE AND VIDEO PROCESSING, 2023, 17 (03) :825-830
[3]  
Ang KaiKeng., 2008, IEEE IJCNN, P2390, DOI DOI 10.1109/IJCNN.2008.4634130
[4]  
bbci, BCI Competition IV Dataset 2a
[5]   A two-stage transformer based network for motor imagery classification [J].
Chaudhary, Priyanshu ;
Dhankhar, Nischay ;
Singhal, Amit ;
Rana, K. P. S. .
MEDICAL ENGINEERING & PHYSICS, 2024, 128
[6]   Automatic EEG seizure detection using dual-tree complex wavelet-Fourier features [J].
Chen, Guangyi .
EXPERT SYSTEMS WITH APPLICATIONS, 2014, 41 (05) :2391-2394
[7]   Deep learning for electroencephalogram (EEG) classification tasks: a review [J].
Craik, Alexander ;
He, Yongtian ;
Contreras-Vidal, Jose L. .
JOURNAL OF NEURAL ENGINEERING, 2019, 16 (03)
[8]   HS-CNN: a CNN with hybrid convolution scale for EEG motor imagery classification [J].
Dai, Guanghai ;
Zhou, Jun ;
Huang, Jiahui ;
Wang, Ning .
JOURNAL OF NEURAL ENGINEERING, 2020, 17 (01)
[9]   Brain Computer Interfaces, a Review [J].
Fernando Nicolas-Alonso, Luis ;
Gomez-Gil, Jaime .
SENSORS, 2012, 12 (02) :1211-1279
[10]  
Han C., 2024, P INT C FUT MED BIOL