Motor Imagery Recognition Based on GMM-JCSFE Model

Features from EEG microstate models, such as time-domain statistical features and state transition probabilities, are typically manually selected based on experience. However, traditional microstate models assume abrupt transitions between states, and the classification features can vary among indiv...

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Bibliographic Details
Main Authors: Chuncheng Liao (Author), Shiyu Zhao (Author), Jiacai Zhang (Author)
Format: Book
Published: IEEE, 2024-01-01T00:00:00Z.
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Summary:Features from EEG microstate models, such as time-domain statistical features and state transition probabilities, are typically manually selected based on experience. However, traditional microstate models assume abrupt transitions between states, and the classification features can vary among individuals due to personal differences. To date, both empirical and theoretical classification results of EEG microstate features have not been entirely satisfactory. Here, we introduce an enhanced feature extraction method that combines Joint label-Common and label-Specific Feature Exploration (JCSFE) with Gaussian Mixture Models (GMM) to explore microstate features. First, GMMs are employed to represent the smooth transitions of EEG spatiotemporal features within microstate models. Second, category-common and category-specific features are identified by applying regularization constraints to linear classifiers. Third, a graph regularizer is used to extract subject-invariant microstate features. Experimental results on publicly available datasets demonstrate that the proposed model effectively encodes microstate features and improves the accuracy of motor imagery recognition across subjects. The primary code is accessible for download from the website: <uri>https://github.com/liaoliao3450/GMM-JCSFE</uri>.
Item Description:1534-4320
1558-0210
10.1109/TNSRE.2024.3451716