MSSA-based adaptive low-frequency noise reduction using spectrum overlap measure

Author:

Kuang WeichaoORCID,Yang Ping,Miao Qing,Ling Wing-KuenORCID

Abstract

Abstract A multistage singular spectrum analysis based method is presented to extract the useful component from the residue stage by stage. In every stage of the decomposition, the sum of the signal-dominated SSA components is treated as the denoised signal. The signal-to-noise ratios of the denoised signals first increase and then decrease. A measurement called spectrum overlap factor (SOF) is proposed to estimate the optimal stage which achieves the highest SNR. First, the factor is calculated to measure the spectrum overlap degree between the residue and the denoised signal in every stage. Then, the curve of the SOF with respect to the number of stages is analyzed. Further, the minimum of the SOFs, which indicates the less spectrum overlap, allows for the estimation of the optimal stage. The proposed strategy avoids inappropriate parameter selection effectively since the estimation of the optimal stage is automatic. Besides, simulation results show that the proposed method has satisfactory denoising performance in different test scenarios.

Funder

Guangdong Basic and Applied Basic Research Foundation

National Natural Science Foundation of China

Publisher

IOP Publishing

Subject

Applied Mathematics,Instrumentation,Engineering (miscellaneous)

Reference28 articles.

1. Baseline wander removal for ECG signals based on improved EMD;Li,2020

2. A hybrid method for removal of power line interference and baseline wander in ECG signals using EMD and EWT;Boda;Biomed. Signal Process. Control,2021

3. Joint empirical mode decomposition and optimal frequency band estimation for adaptive low-frequency noise suppression;Kuang;Circuits Syst. Signal Process.,2023

4. EMD-based filtering (EMDF) of low-frequency noise for speech enhancement;Chatlani;IEEE Trans. Audio Speech Lang. Process.,2012

5. Speech enhancement with EMD and hurst-based mode selection;Zão;IEEE/ACM Trans. Audio Speech Lang. Process.,2014

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