Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.

In recent years, the utilization of motor imagery (MI) signals derived from electroencephalography (EEG) has shown promising applications in controlling various devices such as wheelchairs, assistive technologies, and driverless vehicles. However, decoding EEG signals poses significant challenges du...

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Main Authors: Jaipriya D, Sriharipriya K C
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0311942
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author Jaipriya D
Sriharipriya K C
author_facet Jaipriya D
Sriharipriya K C
author_sort Jaipriya D
collection DOAJ
description In recent years, the utilization of motor imagery (MI) signals derived from electroencephalography (EEG) has shown promising applications in controlling various devices such as wheelchairs, assistive technologies, and driverless vehicles. However, decoding EEG signals poses significant challenges due to their complexity, dynamic nature, and low signal-to-noise ratio (SNR). Traditional EEG pattern recognition algorithms typically involve two key steps: feature extraction and feature classification, both crucial for accurate operation. In this work, we propose a novel method that addresses these challenges by employing empirical mode decomposition (EMD) for feature extraction and a parallel convolutional neural network (PCNN) for feature classification. This approach aims to mitigate non-stationary issues, improve performance speed, and enhance classification accuracy. We validate the effectiveness of our proposed method using datasets from the BCI competition IV, specifically datasets 2a and 2b, which contain motor imagery EEG signals. Our method focuses on identifying two- and four-class motor imagery EEG signal classifications. Additionally, we introduce a transfer learning technique to fine-tune the model for individual subjects, leveraging important features extracted from a group dataset. Our results demonstrate that the proposed EMD-PCNN method outperforms existing approaches in terms of classification accuracy. We conduct both qualitative and quantitative analyses to evaluate our method. Qualitatively, we employ confusion matrices and various performance metrics such as specificity, sensitivity, precision, accuracy, recall, and f1-score. Quantitatively, we compare the classification accuracies of our method with those of existing approaches. Our findings highlight the superiority of the proposed EMD-PCNN method in accurately classifying motor imagery EEG signals. The enhanced performance and robustness of our method underscore its potential for broader applicability in real-world scenarios.
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spelling doaj-art-ca5f35d8a0cc4c54881b7525bfbcb7ed2025-02-05T05:31:19ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01201e031194210.1371/journal.pone.0311942Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.Jaipriya DSriharipriya K CIn recent years, the utilization of motor imagery (MI) signals derived from electroencephalography (EEG) has shown promising applications in controlling various devices such as wheelchairs, assistive technologies, and driverless vehicles. However, decoding EEG signals poses significant challenges due to their complexity, dynamic nature, and low signal-to-noise ratio (SNR). Traditional EEG pattern recognition algorithms typically involve two key steps: feature extraction and feature classification, both crucial for accurate operation. In this work, we propose a novel method that addresses these challenges by employing empirical mode decomposition (EMD) for feature extraction and a parallel convolutional neural network (PCNN) for feature classification. This approach aims to mitigate non-stationary issues, improve performance speed, and enhance classification accuracy. We validate the effectiveness of our proposed method using datasets from the BCI competition IV, specifically datasets 2a and 2b, which contain motor imagery EEG signals. Our method focuses on identifying two- and four-class motor imagery EEG signal classifications. Additionally, we introduce a transfer learning technique to fine-tune the model for individual subjects, leveraging important features extracted from a group dataset. Our results demonstrate that the proposed EMD-PCNN method outperforms existing approaches in terms of classification accuracy. We conduct both qualitative and quantitative analyses to evaluate our method. Qualitatively, we employ confusion matrices and various performance metrics such as specificity, sensitivity, precision, accuracy, recall, and f1-score. Quantitatively, we compare the classification accuracies of our method with those of existing approaches. Our findings highlight the superiority of the proposed EMD-PCNN method in accurately classifying motor imagery EEG signals. The enhanced performance and robustness of our method underscore its potential for broader applicability in real-world scenarios.https://doi.org/10.1371/journal.pone.0311942
spellingShingle Jaipriya D
Sriharipriya K C
Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.
PLoS ONE
title Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.
title_full Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.
title_fullStr Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.
title_full_unstemmed Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.
title_short Parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery EEG signal classification.
title_sort parallel convolutional neural network and empirical mode decomposition for high accuracy in motor imagery eeg signal classification
url https://doi.org/10.1371/journal.pone.0311942
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AT sriharipriyakc parallelconvolutionalneuralnetworkandempiricalmodedecompositionforhighaccuracyinmotorimageryeegsignalclassification