Classification of ECG signals using Hermite functions and MLP neural networks
Publish Year: 1395
Type: Journal paper
Language: English
View: 388
This Paper With 11 Page And PDF Format Ready To Download
- Certificate
- I'm the author of the paper
این Paper در بخشهای موضوعی زیر دسته بندی شده است:
Export:
Document National Code:
JR_JADM-4-1_007
Index date: 10 July 2019
Classification of ECG signals using Hermite functions and MLP neural networks abstract
Classification of heart arrhythmia is an important step in developing devices for monitoring the health of individuals. This paper proposes a three module system for classification of electrocardiogram (ECG) beats. These modules are: denoising module, feature extraction module and a classification module. In the first module the stationary wavelet transform (SWF) is used for noise reduction of the ECG signals. The feature extraction module extracts a balanced combination of the Hermit features and three timing interval feature. Then a number of multi-layer perceptron (MLP) neural networks with different number of layers and eight training algorithms are designed. Seven files from the MIT/BIH arrhythmia database are selected as test data and the performances of the networks, for speed of convergence and accuracy classifications, are evaluated. Generally all of the proposed algorisms have good training time, however, the resilient back propagation (RP) algorithm illustrated the best overall training time among the different training algorithms. The Conjugate gradient back propagation (CGP) algorithm shows the best recognition accuracy about 98.02% using a little amount of features.
Classification of ECG signals using Hermite functions and MLP neural networks Keywords:
Classification of ECG signals using Hermite functions and MLP neural networks authors
A. Ebrahimzadeh
Faculty of Electrical & Computer Engineering, Babol University of Technology.
M. Ahmadi
Faculty of Electrical & Computer Engineering, Babol University of Technology
M. Safarnejad
Faculty of Electrical & Computer Engineering, Babol University of Technology