(2024) An Unsupervised Feature Extraction Method based on CLSTM-AE for Accurate P300 Classification in Brain-Computer Interface Systems. Journal of Biomedical Physics and Engineering. pp. 579-592. ISSN 22517200 (ISSN)
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Abstract
Background: The P300 signal, an endogenous component of event-related poten-tials, is extracted from an electroencephalography signal and employed in Brain-com-puter Interface (BCI) devices. Objective: The current study aimed to address challenges in extracting useful features from P300 components and detecting P300 through a hybrid unsupervised man-ner based on Convolutional Neural Network (CNN) and Long Short-term Memory (LSTM). Material and Methods: In this cross-sectional study, CNN as a useful method for the P300 classification task emphasizes spatial characteristics of data. However, CNN and LSTM networks are combined to modify the classification system by extracting both spatial and temporal features. Then, the CNN-LSTM network was trained in an unsupervised learning method based on an autoencoder to improve Signal-to-noise Ratio (SNR) by extracting main components from latent space. To deal with imbalanced data, an Adaptive Synthetic Sampling Approach (ADASYN) is used and augmented without any duplication. Results: The trained model, tested on the BCI competition III dataset, including two normal subjects, with an accuracy of 95 and 94 for subjects A and B in P300 detection, respectively. Conclusion: CNN-LSTM, was embedded into an autoencoder and introduced to simultaneously extract spatial and temporal features and manage the computational complexity of the method. Further, ADASYN as an augmentation method was proposed to deal with the imbalanced nature of data, which not only maintained feature space as before but also preserved anatomical features of P300. High-quality results highlight the suitable efficiency of the proposed method. © Journal of Biomedical Physics and Engineering.
Item Type: | Article |
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Keywords: | Brain-Computer Interfaces Classificatio Deep Learning P300 Convolutional neural networks Deep neural networks Image coding Long short-term memory Neurons Signal to noise ratio Unsupervised learning Auto encoders Convolutional neural network Feature extraction methods Interface system Memory network Short term memory Spatial features Temporal features Article autoencoder controlled study cross-sectional study electroencephalogram electroencephalography feature extraction human human experiment long short term memory network normal human signal noise ratio support vector machine training |
Page Range: | pp. 579-592 |
Journal or Publication Title: | Journal of Biomedical Physics and Engineering |
Journal Index: | Scopus |
Volume: | 14 |
Number: | 6 |
Identification Number: | https://doi.org/10.31661/jbpe.v0i0.2207-1521 |
ISSN: | 22517200 (ISSN) |
Depositing User: | خانم ناهید ضیائی |
URI: | http://eprints.mui.ac.ir/id/eprint/30475 |
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