Robust Feature Engineering Techniques for Designing Efficient Motor Imagery-Based BCI-Systems
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. Recent...
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Zusammenfassung: | 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
employed to identify the four most significant features. For classification K
Nearest Neighbors (KNN), Support Vector Machine (SVM), Decision Tree (DT), and
Na\"ive Bayes (NB) models were implemented with these selected features,
evaluating their effectiveness through metrics such as testing accuracy,
precision, recall, and F1 Score. By leveraging SVM with a Gaussian Kernel, a
remarkable maximum testing accuracy of 92.50% for motor activities and 95.48%
for imagery activities is achieved. These results are notably more dependable
and gratifying compared to the previous study, where the peak accuracy was
recorded at 74.36%. This research work provides an in-depth analysis of the MI
Limb EEG dataset and it will help in designing and developing simple,
cost-effective and reliable BCI systems for neuro-rehabilitation. |
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DOI: | 10.48550/arxiv.2412.07175 |