Robust Feature Engineering Techniques for Designing Efficient Motor Imagery-Based BCI-Systems
Syed Saim Gardezi, Soyiba Jawed, Mahnoor Khan, Muneeba Bukhari, Rizwan, Ahmed Khan

TL;DR
This paper introduces robust feature engineering methods for EEG data to improve motor imagery BCI systems, achieving significantly higher accuracy than previous approaches and aiding neuro-rehabilitation.
Contribution
It presents a comprehensive feature extraction and selection framework that enhances machine learning classification accuracy for motor imagery EEG signals.
Findings
Support Vector Machine with Gaussian Kernel achieved up to 95.48% accuracy.
Feature selection via MRMR improved model performance and reliability.
The proposed methods outperform previous studies with higher accuracy metrics.
Abstract
A multitude of individuals across the globe grapple with motor disabilities. Neural prosthetics utilizing Brain-Computer Interface (BCI) technology exhibit promise for improving motor rehabilitation outcomes. The intricate nature of EEG data poses a significant hurdle for current BCI systems. Recently, a qualitative repository of EEG signals tied to both upper and lower limb execution of motor and motor imagery tasks has been unveiled. Despite this, the productivity of the Machine Learning (ML) Models that were trained on this dataset was alarmingly deficient, and the evaluation framework seemed insufficient. To enhance outcomes, robust feature engineering (signal processing) methodologies are implemented. A collection of time domain, frequency domain, and wavelet-derived features was obtained from 16-channel EEG signals, and the Maximum Relevance Minimum Redundancy (MRMR) approach was…
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Taxonomy
TopicsNeural Networks and Applications · Brain Tumor Detection and Classification · Handwritten Text Recognition Techniques
MethodsSupport Vector Machine
