학술논문

Feature Classification of Motor Imagery EEG Based on Deep Learning Networks
Document Type
Conference
Source
2023 38th Youth Academic Annual Conference of Chinese Association of Automation (YAC) Chinese Association of Automation (YAC), 2023 38th Youth Academic Annual Conference of. :999-1004 Aug, 2023
Subject
Aerospace
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Power, Energy and Industry Applications
Robotics and Control Systems
Transportation
Deep learning
Training
Convolution
Brain modeling
Electroencephalography
Brain-computer interfaces
Convolutional neural networks
BCI
motor imagery electroencephalogram
AMCNN
BCIIV-2a
Language
ISSN
2837-8601
Abstract
The Brain Computer Interface (BCI) technology refers to not rely on normal brain nerve and musclar tissue, but on computer or other equipment to build a new information transmission circuit between the brain and the external environment, it can directly realize the information exchange between brain and external environment, which is a new way for human to communicate with the outside world. Motor imagery brain-computer interfaces are increasingly being used in practical application scenarios where the degree of accuracy in classification is crucial. However, due to the small amount of data available for MI EEG, overfitting can easily occur when using deep learning network models for classification training, resulting in low recognition rates. To overcome this problem, we have proposed, attention mechanismc convolutional neural network (AMCNN) which is a novel optimized convolution neural network model. A 4-Layer convolutional neural network is built as the classifier and convolutional kernels of different sizes are applied. The performance obtained by the proposed approach is evaluated by Accuracy, Precision, Recall and Kappa value. The accuracy on dataset 2a from competition IV(BCIIV-2a) reaches 86%, and the best Precision, Kappa and Recall on dataset 2a from competition IV is greater than many of other methods.