R Peak Detection in Electrocardiogram Signal Based on an Optimal Combination of Wavelet Transform, Hilbert Transform and Adaptive Thresholding

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Abstract:
Electrocardiogram (ECG) is one of the most common biological signals which plays a significant role in diagnosis of heart diseases. One of the most important parts of ECG signal processing is interpretation of QRS complex and obtaining its characteristics. R wave is one of the most important sections of this complex which has an essential role in diagnosis of heart rhythm irregularities and also in determining heart rate variability (HRV). This paper employs Hilbert and wavelet transforms as well as adaptive thresholding method to investigate an optimal combination of these signal processing techniques for detection of R peak. In the experimental sections of this paper the proposed algorithms are evaluated using both ECG signals from MIT-BIH database and synthetic data simulated in MATLAB environment with different arrhythmias, artifacts and noise levels. Finally, by using wavelet and Hilbert transforms also employing adaptive thresholding technique, an optimal combinational method for R peak detection namely WHAT is obtained that outperforms other techniques quantitatively and qualitatively.
Language:
English
Published:
Journal of Medical Signals and Sensors, Volume:1 Issue: 2, May-Aug 2011
Page:
91
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