Motor Imagery Classification Using Feature Fusion of Spatially Weighted Electroencephalography
Abdullah Al Shiam, Md. Khademul Islam Molla, Abu Saleh Musa Miah, Md. Abdus Samad Kamal

TL;DR
This paper introduces a region-based channel selection and multi-domain feature fusion approach for EEG-based motor imagery classification, enhancing accuracy and efficiency in brain-computer interfaces.
Contribution
It proposes a novel region-specific channel selection combined with multi-domain feature extraction, improving classification performance in EEG motor imagery tasks.
Findings
Achieved 90.77% accuracy on dataset IVA.
Achieved 84.50% accuracy on dataset I.
Outperformed existing methods in BCI classification tasks.
Abstract
A Brain Computer Interface (BCI) connects the human brain to the outside world, providing a direct communication channel. Electroencephalography (EEG) signals are commonly used in BCIs to reflect cognitive patterns related to motor function activities. However, due to the multichannel nature of EEG signals, explicit information processing is crucial to lessen computational complexity in BCI systems. This study proposes an innovative method based on brain region-specific channel selection and multi-domain feature fusion to improve classification accuracy. The novelty of the proposed approach lies in region-based channel selection, where EEG channels are grouped according to their functional relevance to distinct brain regions. By selecting channels based on specific regions involved in motor imagery (MI) tasks, this technique eliminates irrelevant channels, reducing data dimensionality…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Emotion and Mood Recognition
