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KIČMEROVÁ, D. PROVAZNÍK, I.
Original Title
ECG classification using neural networks and McSharry model
Type
conference paper
Language
English
Original Abstract
The presented work is focused on modelling of arrhythmias using McSharry model followed by classification using an artificial neural network. The proposed method uses preprocessing of signals with Linear Approximation Distance Thresholding method and Line Segment Clustering method for establishing of initial parameters of McSharry model. The ECG data was taken from standard MIT/BIH arrhythmia database. Multilayer perceptron was used with classification accuracy of 90.1% for distinguishing of premature ventricular contraction and normal beat.
Keywords
ECG, McSharry model, neural networks
Authors
KIČMEROVÁ, D.; PROVAZNÍK, I.
RIV year
2007
Released
22. 8. 2007
Publisher
IEEE
Location
Brno
ISBN
978-80-214-3409-7
Book
Proceedings of 5th IEEE Workshop Zvule
Pages from
1
Pages to
Pages count
BibTex
@inproceedings{BUT22837, author="Dina {Kičmerová} and Valentine {Provazník}", title="ECG classification using neural networks and McSharry model", booktitle="Proceedings of 5th IEEE Workshop Zvule", year="2007", pages="1--1", publisher="IEEE", address="Brno", isbn="978-80-214-3409-7" }