Evaluation of window size in classification of epileptic short-term EEG signals using a Brain Computer Interface software
ENGINEERING TECHNOLOGY & APPLIED SCIENCE RESEARCH(2018)
摘要
The complexity of epilepsy created a fertile ground for further research in automated methods, attempting to help the epileptologists' task. Over the past years, great breakthroughs have emerged in computer-aided analysis. Furthermore, the advent of Brain Computer Interface (BCI) systems has facilitated significantly the automated seizure analysis. In this study, an evaluation of the window size in automated seizure detection is proposed. The EEG signals from the University of Bonn was employed and segmented into 24 epochs of different window lengths with 50% overlap each time. Statistical and spectral features were extracted in the OpenViBE scenario and were used to train four different classifiers. Results in terms of accuracy were above 80% for the Decision Tree classifier. Also, results indicated that different window sizes provide small variations in classification accuracy.
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关键词
epilepsy,EEG,seizure detection,window size,brain computer interface
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