A composite improved attention convolutional network for motor imagery EEG classification

IntroductionA brain-computer interface (BCI) is an emerging technology that aims to establish a direct communication pathway between the human brain and external devices. Motor imagery electroencephalography (MI-EEG) signals are analyzed to infer users’ intentions during motor imagery. These signals...

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Main Authors: Wenzhe Liao, Zipeng Miao, Shuaibo Liang, Linyan Zhang, Chen Li
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-02-01
Series:Frontiers in Neuroscience
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Online Access:https://www.frontiersin.org/articles/10.3389/fnins.2025.1543508/full
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author Wenzhe Liao
Zipeng Miao
Shuaibo Liang
Linyan Zhang
Chen Li
author_facet Wenzhe Liao
Zipeng Miao
Shuaibo Liang
Linyan Zhang
Chen Li
author_sort Wenzhe Liao
collection DOAJ
description IntroductionA brain-computer interface (BCI) is an emerging technology that aims to establish a direct communication pathway between the human brain and external devices. Motor imagery electroencephalography (MI-EEG) signals are analyzed to infer users’ intentions during motor imagery. These signals hold potential for applications in rehabilitation training and device control. However, the classification accuracy of MI-EEG signals remains a key challenge for the development of BCI technology.MethodsThis paper proposes a composite improved attention convolutional network (CIACNet) for MI-EEG signals classification. CIACNet utilizes a dual-branch convolutional neural network (CNN) to extract rich temporal features, an improved convolutional block attention module (CBAM) to enhance feature extraction, temporal convolutional network (TCN) to capture advanced temporal features, and multi-level feature concatenation for more comprehensive feature representation.ResultsThe CIACNet model performs well on both the BCI IV-2a and BCI IV-2b datasets, achieving accuracies of 85.15 and 90.05%, respectively, with a kappa score of 0.80 on both datasets. These results indicate that the CIACNet model’s classification performance exceeds that of four other comparative models.ConclusionExperimental results demonstrate that the proposed CIACNet model has strong classification capabilities and low time cost. Removing one or more blocks results in a decline in the overall performance of the model, indicating that each block within the model makes a significant contribution to its overall effectiveness. These results demonstrate the ability of the CIACNet model to reduce time costs and improve performance in motor imagery brain-computer interface (MI-BCI) systems, while also highlighting its practical applicability.
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spelling doaj-art-cba66e87fc0946a386d693cc212582d92025-02-05T14:53:33ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2025-02-011910.3389/fnins.2025.15435081543508A composite improved attention convolutional network for motor imagery EEG classificationWenzhe Liao0Zipeng Miao1Shuaibo Liang2Linyan Zhang3Chen Li4School of Artificial Intelligence, Hebei University of Technology, Tianjin, ChinaSchool of Artificial Intelligence, Hebei University of Technology, Tianjin, ChinaSchool of Artificial Intelligence, Hebei University of Technology, Tianjin, ChinaSchool of Artificial Intelligence, Hebei University of Technology, Tianjin, ChinaTianjin Key Laboratory of Environment, Nutrition and Public Health, Department of Occupational and Environmental Health, School of Public Health, Tianjin Medical University, Tianjin, ChinaIntroductionA brain-computer interface (BCI) is an emerging technology that aims to establish a direct communication pathway between the human brain and external devices. Motor imagery electroencephalography (MI-EEG) signals are analyzed to infer users’ intentions during motor imagery. These signals hold potential for applications in rehabilitation training and device control. However, the classification accuracy of MI-EEG signals remains a key challenge for the development of BCI technology.MethodsThis paper proposes a composite improved attention convolutional network (CIACNet) for MI-EEG signals classification. CIACNet utilizes a dual-branch convolutional neural network (CNN) to extract rich temporal features, an improved convolutional block attention module (CBAM) to enhance feature extraction, temporal convolutional network (TCN) to capture advanced temporal features, and multi-level feature concatenation for more comprehensive feature representation.ResultsThe CIACNet model performs well on both the BCI IV-2a and BCI IV-2b datasets, achieving accuracies of 85.15 and 90.05%, respectively, with a kappa score of 0.80 on both datasets. These results indicate that the CIACNet model’s classification performance exceeds that of four other comparative models.ConclusionExperimental results demonstrate that the proposed CIACNet model has strong classification capabilities and low time cost. Removing one or more blocks results in a decline in the overall performance of the model, indicating that each block within the model makes a significant contribution to its overall effectiveness. These results demonstrate the ability of the CIACNet model to reduce time costs and improve performance in motor imagery brain-computer interface (MI-BCI) systems, while also highlighting its practical applicability.https://www.frontiersin.org/articles/10.3389/fnins.2025.1543508/fullelectroencephalographyconvolution neural networkattention mechanismtemporal convolution networkmotor imageryclassification
spellingShingle Wenzhe Liao
Zipeng Miao
Shuaibo Liang
Linyan Zhang
Chen Li
A composite improved attention convolutional network for motor imagery EEG classification
Frontiers in Neuroscience
electroencephalography
convolution neural network
attention mechanism
temporal convolution network
motor imagery
classification
title A composite improved attention convolutional network for motor imagery EEG classification
title_full A composite improved attention convolutional network for motor imagery EEG classification
title_fullStr A composite improved attention convolutional network for motor imagery EEG classification
title_full_unstemmed A composite improved attention convolutional network for motor imagery EEG classification
title_short A composite improved attention convolutional network for motor imagery EEG classification
title_sort composite improved attention convolutional network for motor imagery eeg classification
topic electroencephalography
convolution neural network
attention mechanism
temporal convolution network
motor imagery
classification
url https://www.frontiersin.org/articles/10.3389/fnins.2025.1543508/full
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