Publication | Closed Access
Computerized Multidomain EEG Classification System: A New Paradigm
29
Citations
44
References
2022
Year
EngineeringMachine LearningElectroencephalographySocial SciencesDistinct Eeg DomainsData SciencePattern RecognitionNew ParadigmCognitive ElectrophysiologySchizophrenia EegEeg SystemMultiple Classifier SystemExtreme Learning MachineNeuroimagingComputer ScienceData ClassificationComputational NeuroscienceEeg Signal ProcessingNeuroscienceBraincomputer Interface
The recent advancements in electroencepha- logram (EEG) signals classification largely center around the domain-specific solutions that hinder the algorithm cross-discipline adaptability. This study introduces a computer-aided broad learning EEG system (CABLES) for the classification of six distinct EEG domains under a unified sequential framework. Specifically, this paper proposes three novel modules namely, complex variational mode de- composition (CVMD), ensemble optimization-based featu- res selection (EOFS), and t-distributed stochastic neighbor embedding-based samples reduction (tSNE-SR) methods respectively for the realization of CABLES. Extensive expe- riments are carried out on seven different datasets from diverse disciplines using different variants of the neural network, extreme learning machine, and machine learning classifiers employing a 10-fold cross-validation strategy. Results compared with existing studies reveal that the highest classification accuracy of 99.1%, 97.8%, 94.3%, 91.5%, 98.9%, 95.3%, and 92% is achieved for the motor imagery dataset A, dataset B, slow cortical potentials, epilepsy, alcoholic, and schizophrenia EEG datasets res- pectively. The overall empirical analysis authenticates that the proposed CABLES framework outperforms the existing domain-specific methods in terms of classification accuracies and multirole adaptability, thus can be endorsed as an effective automated neural rehabilitation system.
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