Classification of both Seizure and Non-seizure based on EEG Signals using Hidden Markov Model

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8
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11

초록

In this paper, we propose a novel feature extraction method, a slope of counting wavelet coefficients over various thresholds (SCOT) method based hidden markov model (HMM) for seizure detection. The purpose of the proposed method is to aid in the diagnosis of epilepsy, which requires long-term electroencephalography (EEG) monitoring. The interpretation of long-term EEG monitoring takes a lot of time and requires the assistance of experienced experts. In order to overcome these limitations, it is important to apply the optimized feature extraction algorithm to the seizure detection system. The proposed SCOT method based HMM has a robust detection accuracy, and a short feature extraction time; whereas the existing methods require a large amount of training data and a long feature extraction time for learning the seizure detection model. Experimental result shows that with the proposed method, the average detection accuracies are 96.5% and 98.4% using the HMM in seizure and non-seizure, respectively. In addition, the proposed method has robust detection performance regardless of the given window sizes (0.15, 0.25, 0.5, 1, and 2 seconds) are used.

키워드

Electroencephalographslopewaveletseizurediagnosis of epilepsyclassificationhidden markov modelWAVELET FEATURE-EXTRACTIONARTIFICIAL NEURAL-NETWORKFEATURESSYSTEM
제목
Classification of both Seizure and Non-seizure based on EEG Signals using Hidden Markov Model
저자
Lee, MiranYoun, InchanRyu, JaehwanKim, Deok-Hwan
DOI
10.1109/BigComp.2018.00075
발행일
2018
유형
Proceedings Paper
저널명
2018 IEEE INTERNATIONAL CONFERENCE ON BIG DATA AND SMART COMPUTING (BIGCOMP)
페이지
469 ~ 474