Developing Signal Processing and Feature Extraction Methods for Brain Computer Interface
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Abstract
Brain Computer Interface (BCI) systems represent a revolutionary advancement in neural
output manipulation, empowering individuals to interact with their environment solely through
brain signals, bypassing conventional neuromuscular pathways. These systems primarily aim
to facilitate control over assistive devices like speech synthesizers and robotic wheelchairs,
facilitating seamless interaction with the surroundings. At the core of BCI systems lie
preprocessing and feature extraction modules, which play pivotal roles in enhancing system
performance.
To this end, this work endeavors to pioneer novel techniques in both preprocessing and feature
extraction for BCI systems. Beginning with the preprocessing phase, our focus centers on
refining artifact removal from Electroencephalogram (EEG) data. We propose an automated
approach leveraging Independent Component Analysis (ICA) guided by Sparse Entropy,
effectively identifying and eliminating artifactual Independent Components without manual
intervention. Furthermore, the methodology amalgamates Preconditional ICA for real data with
Time-Reassigned Multisynchrosqueezing Transform, amplifying EEG artifact correction
performance while preserving valuable neurological signals intertwined with artifacts. This
correction-centric approach ensures a robust foundation for neuroscientific exploration and
clinical applications by retaining pertinent neural activity.
Transitioning to feature extraction, we introduce an innovative method tailored for Motor
Imagery (MI) EEG signals within BCI systems. By integrating Multivariate Variational Mode
Decomposition with Phase Space Reconstruction, we address the complexity of multivariate
oscillatory patterns in MI-EEG signals, enhancing system accuracy and reliability. This method
strategically utilizes data from a minimal set of EEG channels, optimizing computational
efficiency without compromising performance. By reconstructing modes derived from
Multivariate Variational Mode Decomposition into a 2D phase space, we gain deeper insights
into the dynamic evolution of MI-EEG signals, facilitating comprehensive feature extraction
encompassing statistical metrics and nonlinear characteristics. Remarkably, this method
achieves high classification accuracy in both binary and multi-class tasks using five EEG
channels, underscoring its viability for real-time BCI applications.
In a further advancement, we propose a novel feature extraction method focusing on MI-EEG
signals, combining Local Maximum Synchrosqueezing Transform with Non-Negative Matrix
Factorization. This approach presents substantial improvements in BCI technology, integrating
a channel selection technique to enhance real-time feasibility while reducing computational
burden and eliminating redundant information. The Local Maximum Synchrosqueezing
Transform extracts temporal and spectral information from selected channels, transforming
MI-EEG signals into time-frequency representations with enhanced resolution. Non-Negative
Matrix Factorization further refines these representations, capturing meaningful patterns and
reducing dimensionality for precise signal classification. By incorporating statistical and
nonlinear features, this method achieves outstanding classification accuracies in binary and
multi-class tasks, surpassing previous approaches and affirming its efficacy in advancing MI-
EEG signal analysis for BCI systems.
This comprehensive exploration delves into the forefront of BCI systems, revolutionizing
neural output manipulation and enhancing user interaction with the environment. By focusing
on innovative preprocessing and feature extraction techniques, we've significantly advanced
the capabilities of BCI systems. Our automated artifact removal method, coupled with a
correction-centric approach, ensures robust neural signal processing, preserving vital
neurological activity for comprehensive analysis. Furthermore, our feature extraction methods
for MI-EEG signals showcase remarkable accuracy and efficiency, leveraging minimal EEG
channels while capturing complex temporal and spectral dynamics. These advancements
underscore the potential for real-time BCI applications, paving the way for more feasible and
effective BCI system designs with profound implications for neuroscientific research and
clinical practice.
