Abstract

Electrocardiographic (ECG) signal is essential to diagnose and analyse cardiac disease. However, ECG signals are susceptible to be contaminated with various noises, which affect the application value of ECG signals. In this paper, we propose an ECG signal de-noising method using wavelet energy and a sub-band smoothing filter. Unlike the traditional wavelet threshold de-noising method, which carries out threshold processing for all wavelet coefficients, the wavelet coefficients that require threshold de-noising are selected according to the wavelet energy and other wavelet coefficients remain unchanged in the proposed method. Moreover, The sub-band smoothing filter is adopted to further de-noise the ECG signal and improve the ECG signal quality. The ECG signals of the standard MIT-BIH database are adopted to verify the proposed method using MATLAB software. The performance of the proposed approach is assessed using Signal-To-Noise ratio (SNR), Mean Square Error (MSE) and percent root mean square difference (PRD). The experimental results illustrate that the proposed method can effectively remove noise from the noisy ECG signals in comparison to the existing methods.

Highlights

  • ECG signals record the electrical activity of the heart, which can reflect its state

  • The wavelet coefficients that required threshold de-noising are determined by wavelet energy, and further de-noising through sub-band smoothing filter to obtain the final de-noised smoothed ECG signal

  • A new de-noising method of ECG signals based on wavelet energy and sub-band smoothing is proposed in this paper

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Summary

Introduction

ECG signals record the electrical activity of the heart, which can reflect its state. ECG signals are widely used in heart disease diagnosis [1]. An ECG signal is degraded by various noises in the acquisition process, which reduces the application value of ECG. There are many reasons for ECG signal degradation, such as electromyographic (EMG) interference, respiratory interference, frequency interference, etc. Due to the different types of ECG signal noise sources, filtering becomes a difficult problem [2].

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