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Information Journal Paper

Title

CLASSIFICATION OF CARDIAC ARRHYTHMIAS BY LEARNING VECTOR QUANTIZATER NETWORK AND BASED ON THE EXTRACTED FEATURES FROM THE WAVELET TRANSFORMATION

Pages

  167-176

Abstract

 In this paper, the role of VECTOR QUANTIZER NEURAL NETWORK in CLASSIFICATION of six types of ECG signals has been investigated using the features that extracted from Daubechies6 WAVELET TRANSFORMATION. The six types of signals are: normal beat, left bundle branch block beat, right bundle branch block beat, premature ventricular contraction paced beat and fusion of paced and normal beats. The required data were obtained from the MIT/BIH arrhythmia databases. By using the annotation files of the databases, the patterns of these six types of ECG signals were separated. Then, for better feature extraction, filtering and scaling on the patterns were applied. We used the energies of the last five detailed signals obtained from the exerting the WAVELET TRANSFORMATION in six levels, as the pattern features for Vector Quantizer Network training and testing. From each class, five hundred patterns were used for network training and one hundred patterns for testing. The results indicated %93.1 accuracy for six classes and above %94.3 for lesser than six classes. Then the rate of similarity and dissimilarity of the classes were considered. Finally, the results of this method were compared with some other methods in terms of accuracy.

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    APA: Copy

    ESMAEILPOUR, J., MIRZAKOUCHAKI, S., SEYFALI HARSINI, J., & KADKHODA MOHAMMADI, A.A.R.. (2007). CLASSIFICATION OF CARDIAC ARRHYTHMIAS BY LEARNING VECTOR QUANTIZATER NETWORK AND BASED ON THE EXTRACTED FEATURES FROM THE WAVELET TRANSFORMATION. IRANIAN JOURNAL OF BIOMEDICAL ENGINEERING, 1(3), 167-176. SID. https://sid.ir/paper/81636/en

    Vancouver: Copy

    ESMAEILPOUR J., MIRZAKOUCHAKI S., SEYFALI HARSINI J., KADKHODA MOHAMMADI A.A.R.. CLASSIFICATION OF CARDIAC ARRHYTHMIAS BY LEARNING VECTOR QUANTIZATER NETWORK AND BASED ON THE EXTRACTED FEATURES FROM THE WAVELET TRANSFORMATION. IRANIAN JOURNAL OF BIOMEDICAL ENGINEERING[Internet]. 2007;1(3):167-176. Available from: https://sid.ir/paper/81636/en

    IEEE: Copy

    J. ESMAEILPOUR, S. MIRZAKOUCHAKI, J. SEYFALI HARSINI, and A.A.R. KADKHODA MOHAMMADI, “CLASSIFICATION OF CARDIAC ARRHYTHMIAS BY LEARNING VECTOR QUANTIZATER NETWORK AND BASED ON THE EXTRACTED FEATURES FROM THE WAVELET TRANSFORMATION,” IRANIAN JOURNAL OF BIOMEDICAL ENGINEERING, vol. 1, no. 3, pp. 167–176, 2007, [Online]. Available: https://sid.ir/paper/81636/en

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