Abstract

In this paper a robust R Peak and QRS detection using Wavelet Transform has been developed. Wavelet Transform provides efficient localization in both time and frequency. Discrete Wavelet Transform (DWT) has been used to extract relevant information from the ECG signal in order to perform classification. Electrocardiogram (ECG) signal feature parameters are the basis for signal Analysis, Diagnosis, Authentication and Identification performance. These parameters can be extracted from the intervals and amplitudes of the signal. The first step in extracting ECG features starts from the exact detection of R Peak in the QRS Complex. The accuracy of the determined temporal locations of R Peak and QRS complex is essential for the performance of other ECG processing stages. Individuals can be identified once ECG signature is formulated. This is an initial work towards establishing that the ECG signal is a signature like fingerprint, retinal signature for any individual Identification. Analysis is carried out using MATLAB Software. The correct detection rate of the Peaks is up to 99% based on MIT-BIH ECG database.

Highlights

  • The Electrocardiogram is the electrical manifestation of the contractile activity of the heart

  • It is a graphical record of the direction and magnitude of the electrical activity that is generated by depolarization and repolarization of the atria and ventricles

  • Discrete Wavelet Transform can be used as a good tool for non-stationary ECG signal detection

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Summary

INTRODUCTION

The Electrocardiogram is the electrical manifestation of the contractile activity of the heart. It is a graphical record of the direction and magnitude of the electrical activity that is generated by depolarization and repolarization of the atria and ventricles. It provides information about the heart rate, rhythm, and morphology. The QRS complex is the most striking waveform, caused by ventricular depolarization of the human heart. Wavelet Transform has been proven to be useful tool for non-stationary signal analysis. Discrete Wavelet Transform can be used as a good tool for non-stationary ECG signal detection. DWT is a sampled version of the Continuous Wavelet Transform (CWT) in a dyadic grid

WAVELET TRANSFORM
Wavelet Selection
METHODOLOGY
Detection of R peak and QRS
Findings
CONCLUSION
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