An incremental algorithm based on multichannel non-negative matrix partial co-factorization for ambient denoising in auscultation
Juan De La Torre Cruz, Francisco Jesus Canadas Quesada, Damian, Martinez-Munoz, Nicolas Ruiz Reyes, Sebastian Garcia Galan, Julio Jose, Carabias Orti

TL;DR
This paper introduces an incremental multichannel non-negative matrix partial co-factorization algorithm to effectively remove ambient noise from biomedical auscultation sounds, especially in highly noisy environments with SNR as low as -20 dB.
Contribution
It presents a novel incremental multichannel NMPCF method that models ambient noise as repetitive sounds and refines biomedical signals through multiple stages, outperforming existing denoising techniques.
Findings
The proposed method shows less performance drop than MSS and NLMS.
It maintains stable SDR and SIR across different noise types and SNR levels.
It demonstrates high robustness even with delays between input channels.
Abstract
The aim of this study is to implement a method to remove ambient noise in biomedical sounds captured in auscultation. We propose an incremental approach based on multichannel non-negative matrix partial co-factorization (NMPCF) for ambient denoising focusing on high noisy environment with a Signal-to-Noise Ratio (SNR) <= -5 dB. The first contribution applies NMPCF assuming that ambient noise can be modelled as repetitive sound events simultaneously found in two single-channel inputs captured by means of different recording devices. The second contribution proposes an incremental algorithm, based on the previous multichannel NMPCF, that refines the estimated biomedical spectrogram throughout a set of incremental stages by eliminating most of the ambient noise that was not removed in the previous stage at the expense of preserving most of the biomedical spectral content. The ambient…
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Taxonomy
MethodsSparse Evolutionary Training
