Ensemble Classifier for Epileptic Seizure Detection for Imperfect EEG Data
التاريخ
2015البيانات الوصفية
عرض كامل للتسجيلةالملخص
Brain status information is captured by physiological electroencephalogram (EEG) signals, which are extensively used to study
different brain activities.This study investigates the use of a new ensemble classifier to detect an epileptic seizure from compressed
and noisy EEG signals. This noise-aware signal combination (NSC) ensemble classifier combines four classification models based
on their individual performance. The main objective of the proposed classifier is to enhance the classification accuracy in the
presence of noisy and incomplete information while preserving a reasonable amount of complexity.The experimental results show
the effectiveness of the NSC technique, which yields higher accuracies of 90% for noiseless data compared with 85%, 85.9%, and
89.5% in other experiments. The accuracy for the proposed method is 80% when SNR = 1dB, 84% when SNR = 5dB, and 88%
when SNR = 10dB, while the compression ratio (CR) is 85.35% for all of the datasets mentioned.
المجموعات
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