Brain Computer Interface (BCI) based on Electroencephalographic (EEG) patterns due to new cognitive tasks
Zahmeeth Sayed Sakkaff

TL;DR
This study explores new mental tasks for EEG-based Brain-Computer Interfaces, demonstrating that imagined hitting targets can outperform traditional motor imagery tasks in classification accuracy.
Contribution
It introduces a novel mental task set called 'Hit Series' and compares its effectiveness with established motor imagery tasks, showing superior classification performance.
Findings
'Hit Series' mental tasks achieved up to 100% accuracy in binary classification.
'Hit Series' outperformed motor imagery tasks in classification accuracy.
EEG feature extraction and classification methods were optimized for new mental tasks.
Abstract
New mental tasks were investigated for suitability in Brain-Computer Interface (BCI). Electroencephalography (EEG) signals were collected and analyzed to identify these mental tasks. MS Windows-based software was developed for investigating and classifying recorded EEG data with unnecessary frequencies filtered out with Bandpass filtering. To identify the best feature vector construction method for a given mental task, feature vectors were constructed using Bandpower, Principal Component Analysis, and Downsampling separately. These feature vectors were then classified with Linear Discriminant Analysis, Linear Support Vector Machines, Critical Distance Classifiers, Nearest Neighbor Classifiers, and their Non-Linear counterparts to find the best-performing classifier. For comparison purposes, performances of already well-known mental tasks in the BCI community were computed along with…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
