Subject-Independent P300 Speller Classification using Time-Frequency Representation and Double Input CNN with Feature Concatenation

This study proposes a Double Input Convolutional Neural Network with Feature Concatenation (DiCNN-FC) for the classification task of the P300 speller. Two time-frequency representations of electroencephalography (EEG); namely, power and phase spectrograms; have been employed as input for the DiCNN-F...

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Bibliographic Details
Published inInternational Conference on Digital Signal Processing proceedings pp. 1 - 5
Main Authors Ermaganbet, Zangar, Mussabayeva, Ayana, Jamwal, Prashant Kumar, Akhtar, Muhammad Tahir
Format Conference Proceeding
LanguageEnglish
Published IEEE 11.06.2023
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Summary:This study proposes a Double Input Convolutional Neural Network with Feature Concatenation (DiCNN-FC) for the classification task of the P300 speller. Two time-frequency representations of electroencephalography (EEG); namely, power and phase spectrograms; have been employed as input for the DiCNN-FC. Each spectrogram has been processed separately using convolutional layers and concatenated with each other for decision-making in the dense layers. The use of DiCNN-FC produces reliable results as the decision is made based on two sets of features. Two P300 datasets, one from amyotrophic lateral sclerosis (ALS) patients, and another from healthy subjects have been used to evaluate the performance of the proposed method. The performance comparison has been performed for two classical methods for P300 classification, namely Support Vector Machine (SVM) and Linear Discriminant Analysis (LDA). The achieved results show the DiCNN-FC model's ability to perform subject-independent P300 component identification based on single-trial data on both datasets.
ISSN:2165-3577
DOI:10.1109/DSP58604.2023.10167987