AI Article Synopsis

  • The classification of EEG signals is crucial for brain-computer interfaces (BCIs), and a new method using sparse representation and fast compression residual convolutional neural networks (FCRes-CNNs) is proposed for accurate classification.
  • This approach segments EEG waveforms into subsignals and employs the common spatial patterns algorithm to extract features, followed by creating a sparse representation dictionary.
  • The methodology was tested using datasets from BCI competitions, achieving an impressive average classification accuracy of 98.82%, outperforming previous methods and demonstrating effectiveness for large data recordings in BCIs.

Article Abstract

The classification of electroencephalogram (EEG) signals is of significant importance in brain-computer interface (BCI) systems. Aiming to achieve intelligent classification of EEG types with high accuracy, a classification methodology using sparse representation (SR) and fast compression residual convolutional neural networks (FCRes-CNNs) is proposed. In the proposed methodology, EEG waveforms of classes 1 and 2 are segmented into subsignals, and 140 experimental samples were achieved for each type of EEG signal. The common spatial patterns algorithm is used to obtain the features of the EEG signal. Subsequently, the redundant dictionary with sparse representation is constructed based on these features. Finally, the samples of the EEG types were imported into the FCRes-CNN model having fast down-sampling module and residual block structural units to be identified and classified. The datasets from BCI Competition 2005 (dataset IVa) and BCI Competition 2003 (dataset III) were used to test the performance of the proposed deep learning classifier. The classification experiments show that the recognition averaged accuracy of the proposed method is 98.82%. The experimental results show that the classification method provides better classification performance compared with sparse representation classification (SRC) method. The method can be applied successfully to BCI systems where the amount of data is large due to daily recording.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7596898PMC
http://dx.doi.org/10.3389/fnins.2020.00808DOI Listing

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