Optimising MFCC parameters for the automatic detection of respiratory diseases
Yuyang Yan, Sami O. Simons, Loes van Bemmel, Lauren Reinders, Frits M.E. Franssen, and Visara Urovi

TL;DR
This study systematically investigates how MFCC extraction parameters affect the accuracy of respiratory disease detection using voice signals, optimizing parameters to improve diagnostic performance.
Contribution
It provides the first comprehensive analysis of MFCC parameter impacts on respiratory disease diagnosis across multiple datasets, leading to optimized extraction settings.
Findings
Optimal number of MFCC coefficients is around 30.
MFCC performance decreases with larger hop lengths.
Optimized parameters significantly improve SVM classification accuracy.
Abstract
Voice signals originating from the respiratory tract are utilized as valuable acoustic biomarkers for the diagnosis and assessment of respiratory diseases. Among the employed acoustic features, Mel Frequency Cepstral Coefficients (MFCC) is widely used for automatic analysis, with MFCC extraction commonly relying on default parameters. However, no comprehensive study has systematically investigated the impact of MFCC extraction parameters on respiratory disease diagnosis. In this study, we address this gap by examining the effects of key parameters, namely the number of coefficients, frame length, and hop length between frames, on respiratory condition examination. Our investigation uses four datasets: the Cambridge COVID-19 Sound database, the Coswara dataset, the Saarbrucken Voice Disorders (SVD) database, and a TACTICAS dataset. The Support Vector Machine (SVM) is employed as the…
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