Optimal Parameters of Adaptive Segmentation for Epileptic Graphoelements Recognition

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Kala, David
Krajca, Vladimir
Schaabova, Hana
Lhotska, Lenka
Gerla, Vaclav

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Mark

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Společnost pro radioelektronické inženýrství

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Abstract

Manual review of EEG records, as it is per¬formed in common medical practice, is very time-consuming. There is an effort to make this analysis easier and faster for neurologists by using systems for automatic EEG graphoelements recognition. Such a system is composed of three steps: (1) segmentation, which is a subject of this article, (2) features extraction and (3) classification. Precision of classification, and thereby the whole recognition, is strongly affected by the quality of preceding segmentation procedure, which depends on the method of segmentation and its parameters. In this paper, Varri’s method for segmentation of real epileptic EEG signals is used. Effect of input parameters on segmentation outcome is discussed and parameters values are proposed to achieve optimal outcome suitable for the following classification and graphoelements recognition. Only the results of segmentation are presented in this paper.

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Radioengineering. 2017 vol. 26, č. 1, s. 323-329. ISSN 1210-2512
http://www.radioeng.cz/fulltexts/2017/17_01_0323_0329.pdf

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en

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Except where otherwised noted, this item's license is described as Creative Commons Attribution 4.0 International
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