Author/Authors :
Wan, Xiang-kui Hubei University of Technology - Wuhan, China , Wu, Haibo Hubei University of Technology - Wuhan, China , Qiao, Fei Hubei University of Technology - Wuhan, China , Li, Feng-cong Hubei University of Technology - Wuhan, China , Li, Yan Faculty of Health - Engineering and Sciences - University of Southern Queensland - Toowoomba, Australia , Yan, Yue-wen Hubei University of Technology - Wuhan, China , Wei, Jia-xin Hubei University of Technology - Wuhan, China
Abstract :
One of the major noise components in electrocardiogram (ECG) is the baseline wander (BW). Effective methods for suppressing
BW include the wavelet-based (WT) and the mathematical morphological filtering-based (MMF) algorithms. However, the T
waveform distortions introduced by the WT and the rectangular/trapezoidal distortions introduced by MMF degrade the quality
of the output signal. Hence, in this study, we introduce a method by combining the MMF and WT to overcome the shortcomings
of both existing methods. To demonstrate the effectiveness of the proposed method, artificial ECG signals containing a clinical BW
are used for numerical simulation, and we also create a realistic model of baseline wander to compare the proposed method with
other state-of-the-art methods commonly used in the literature. The results show that the BW suppression effect of the proposed
method is better than that of the others. Also, the new method is capable of preserving the outline of the BW and avoiding
waveform distortions caused by the morphology filter, thereby obtaining an enhanced quality of ECG.
Keywords :
Transformation , Electrocardiogram , Morphological , ECG