Detection of epileptic seizure using Support Vector Machine Classifier - extracted features from EEG signals
Date
2021-06Publisher
Brac UniversityAuthor
Amiz, Asef HassanTalukder, Md. Golam Muid
Shahriar, Labib
Chowdhury, Sahal Ahamad
Hasan, Md. Mehedi
Metadata
Show full item recordAbstract
Epilepsy is the most common neurological issue in people after stroke. Around
40 or 50 million individuals on the planet endure epilepsy. Epilepsy is characterized by an irregular seizure in which abnormal electrical activity in the mind
causes adjusted recognition or conduct. The most commonly used test for detecting Epilepsy is EEG - which stands for Electroencephalogram. In this thesis, we tried to develop an automated system using machine learning that can detect epileptic seizure. We cropped one hour of pre-seizure and post-seizure signal
and extracted features from it. We used Fast Fourier Transformation to make our
data easier to process and applied Power Spectrum Density (PSD) to calculate energy from it. Finally we used Support Vector Machine (SVM) to classify among
these data to differentiate between seizure and non-seizure. We have managed
to achieve 89% accuracy using this method on the 23 cases that we had in our
dataset.