Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance

(1) Background: in the field of motor-imagery brain–computer interfaces (MI-BCIs), obtaining discriminative features among multiple MI tasks poses a significant challenge. Typically, features are extracted from single electroencephalography (EEG) channels, neglecting their interconnections, which le...

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الحاوية / القاعدة:Sensors
المؤلفون الرئيسيون: Ilaria Siviero, Gloria Menegaz, Silvia Francesca Storti
التنسيق: مقال
اللغة:الإنجليزية
منشور في: MDPI AG 2023-08-01
الموضوعات:
الوصول للمادة أونلاين:https://www.mdpi.com/1424-8220/23/17/7520
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author Ilaria Siviero
Gloria Menegaz
Silvia Francesca Storti
author_facet Ilaria Siviero
Gloria Menegaz
Silvia Francesca Storti
author_sort Ilaria Siviero
collection DOAJ
container_title Sensors
description (1) Background: in the field of motor-imagery brain–computer interfaces (MI-BCIs), obtaining discriminative features among multiple MI tasks poses a significant challenge. Typically, features are extracted from single electroencephalography (EEG) channels, neglecting their interconnections, which leads to limited results. To address this limitation, there has been growing interest in leveraging functional brain connectivity (FC) as a feature in MI-BCIs. However, the high inter- and intra-subject variability has so far limited its effectiveness in this domain. (2) Methods: we propose a novel signal processing framework that addresses this challenge. We extracted translation-invariant features (TIFs) obtained from a scattering convolution network (SCN) and brain connectivity features (BCFs). Through a feature fusion approach, we combined features extracted from selected channels and functional connectivity features, capitalizing on the strength of each component. Moreover, we employed a multiclass support vector machine (SVM) model to classify the extracted features. (3) Results: using a public dataset (IIa of the BCI Competition IV), we demonstrated that the feature fusion approach outperformed existing state-of-the-art methods. Notably, we found that the best results were achieved by merging TIFs with BCFs, rather than considering TIFs alone. (4) Conclusions: our proposed framework could be the key for improving the performance of a multiclass MI-BCI system.
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spelling doaj-art-af89fb23fdfa41a1817495c4a135d09a2025-08-19T22:00:56ZengMDPI AGSensors1424-82202023-08-012317752010.3390/s23177520Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface PerformanceIlaria Siviero0Gloria Menegaz1Silvia Francesca Storti2Department of Computer Science, University of Verona, Strada Le Grazie 15, 37134 Verona, ItalyDepartment of Engineering for Innovation Medicine, University of Verona, Strada Le Grazie 15, 37134 Verona, ItalyDepartment of Engineering for Innovation Medicine, University of Verona, Strada Le Grazie 15, 37134 Verona, Italy(1) Background: in the field of motor-imagery brain–computer interfaces (MI-BCIs), obtaining discriminative features among multiple MI tasks poses a significant challenge. Typically, features are extracted from single electroencephalography (EEG) channels, neglecting their interconnections, which leads to limited results. To address this limitation, there has been growing interest in leveraging functional brain connectivity (FC) as a feature in MI-BCIs. However, the high inter- and intra-subject variability has so far limited its effectiveness in this domain. (2) Methods: we propose a novel signal processing framework that addresses this challenge. We extracted translation-invariant features (TIFs) obtained from a scattering convolution network (SCN) and brain connectivity features (BCFs). Through a feature fusion approach, we combined features extracted from selected channels and functional connectivity features, capitalizing on the strength of each component. Moreover, we employed a multiclass support vector machine (SVM) model to classify the extracted features. (3) Results: using a public dataset (IIa of the BCI Competition IV), we demonstrated that the feature fusion approach outperformed existing state-of-the-art methods. Notably, we found that the best results were achieved by merging TIFs with BCFs, rather than considering TIFs alone. (4) Conclusions: our proposed framework could be the key for improving the performance of a multiclass MI-BCI system.https://www.mdpi.com/1424-8220/23/17/7520functional brain connectivitymotor-imagery brain–computer interfacetranslation-invariant featuresscattering convolution networkfeature fusionmulticlass classification
spellingShingle Ilaria Siviero
Gloria Menegaz
Silvia Francesca Storti
Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance
functional brain connectivity
motor-imagery brain–computer interface
translation-invariant features
scattering convolution network
feature fusion
multiclass classification
title Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance
title_full Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance
title_fullStr Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance
title_full_unstemmed Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance
title_short Functional Connectivity and Feature Fusion Enhance Multiclass Motor-Imagery Brain–Computer Interface Performance
title_sort functional connectivity and feature fusion enhance multiclass motor imagery brain computer interface performance
topic functional brain connectivity
motor-imagery brain–computer interface
translation-invariant features
scattering convolution network
feature fusion
multiclass classification
url https://www.mdpi.com/1424-8220/23/17/7520
work_keys_str_mv AT ilariasiviero functionalconnectivityandfeaturefusionenhancemulticlassmotorimagerybraincomputerinterfaceperformance
AT gloriamenegaz functionalconnectivityandfeaturefusionenhancemulticlassmotorimagerybraincomputerinterfaceperformance
AT silviafrancescastorti functionalconnectivityandfeaturefusionenhancemulticlassmotorimagerybraincomputerinterfaceperformance