Performance analysis of wavelet transforms and morphological operator-based classification of epilepsy risk levels

被引:0
作者
Rajaguru Harikumar
Thangavel Vijayakumar
机构
[1] Bannari Amman Institute of Technology,
来源
EURASIP Journal on Advances in Signal Processing | / 2014卷
关键词
EEG signals; Morphological operators; Wavelet transforms; Code converter; Singular value decomposition; Expectation maximization; Modified expectation maximization;
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摘要
The objective of this paper is to compare the performance of singular value decomposition (SVD), expectation maximization (EM), and modified expectation maximization (MEM) as the postclassifiers for classifications of the epilepsy risk levels obtained from extracted features through wavelet transforms and morphological filters from electroencephalogram (EEG) signals. The code converter acts as a level one classifier. The seven features such as energy, variance, positive and negative peaks, spike and sharp waves, events, average duration, and covariance are extracted from EEG signals. Out of which four parameters like positive and negative peaksand spike and sharp waves, events and average duration are extracted using Haar, dB2, dB4, and Sym 8 wavelet transforms with hard and soft thresholding methods. The above said four features are also extracted through morphological filters. Then, the performance of the code converter and classifiers are compared based on the parameters such as performance index (PI) and quality value (QV).The performance index and quality value of code converters are at low value of 33.26% and 12.74, respectively. The highest PI of 98.03% and QV of 23.82 are attained at dB2 wavelet with hard thresholding method for SVD classifier. All the postclassifiers are settled at PI value of more than 90% at QV of 20.
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