Hybrid IIR/FIR Wavelet Filter Banks for ECG Signal Denoising

ElectroCardioGram (ECG) signals are usually corrupted with various types of noise/artifacts such as baseline wander and muscle contraction artifacts which degrade the signal quality and might lead to misdiagnosis of the patient. The wavelet denoising technique is widely studied in the artifact removal literature which employs conventional Finite Impulse Response (FIR) wavelet filter banks for decomposing, thresholding and reconstructing the noisy signal to obtain high fidelity and clean ECG signal. However, the use of high order FIR wavelet filters increases the hardware complexity and cost of the system. This paper presents novel hybrid Infinite Impulse Response (IIR)/FIR Discrete Wavelet Transform (DWT) filter banks that can be employed in ambulatory health monitoring applications for denoising purposes. The proposed systems are evaluated and compared to the conventional FIR based DWT systems in terms of the computational complexity as well as the denoising performance. For this purpose, raw ECG data from MIT-BIH arrhythmia database are contaminated with synthetic noise and denoised with the aforementioned filter banks. The results from 100 Monte Carlo simulations demonstrated that the proposed filter banks provide better denoising performance with fewer arithmetic operations than those reported in the open literature.

[1]  Yonghong Tan,et al.  A Novel Adaptive Wavelet Thresholding with Identical Correlation Shrinkage Function for ECG Noise Removal , 2018 .

[2]  Izzet Kale,et al.  Low complexity all-pass based polyphase decimation filters for ECG monitoring , 2015, 2015 11th Conference on Ph.D. Research in Microelectronics and Electronics (PRIME).

[3]  Xiaolu Li,et al.  Electrocardiograph signal denoising based on sparse decomposition , 2017, Healthcare technology letters.

[4]  Jassim M. Abdul-Jabbar,et al.  Allpass-based design, multiplierless realization and implementation of IIR wavelet filter banks with approximate linear phase , 2011, International Symposium on Innovations in Information and Communications Technology.

[5]  Man-Kay Law,et al.  A 0.45 V 147–375 nW ECG Compression Processor With Wavelet Shrinkage and Adaptive Temporal Decimation Architectures , 2017, IEEE Transactions on Very Large Scale Integration (VLSI) Systems.

[6]  Toshinori Yoshikawa,et al.  Design of orthonormal IIR wavelet filter banks using allpass filters , 1999, Signal Process..

[7]  Izzet Kale,et al.  IIR Wavelet Filter Banks for ECG Signal Denoising , 2018, 2018 Signal Processing: Algorithms, Architectures, Arrangements, and Applications (SPA).

[8]  Izzet Kale,et al.  Multiplier Free Implementation of 8-Tap Daubechies Wavelet Filters for Biomedical Applications , 2017, 2017 New Generation of CAS (NGCAS).

[9]  Ljiljana Milic,et al.  EXAMPLES OF ORTHONORMAL WAVELET TRANSFORM IMPLEMENTED WITH IIR FILTER PAIRS , 2005 .