A Machine Hearing System for Robust Cough Detection Based on a High-Level Representation of Band-Specific Audio Features
Jes\'us Monge-Alvarez, Carlos Hoyos-Barcel\'o, Luis M., San-Jos\'e-Revuelta, Pablo Casaseca-de-la-Higuera

TL;DR
This paper introduces a robust, audio-based machine hearing system for cough detection that performs well in noisy real-life scenarios, enabling easier and more comfortable cough monitoring.
Contribution
The paper proposes a novel high-level feature representation and a two-step detection method for accurate cough segmentation in noisy environments.
Findings
Achieves 92.71% sensitivity and 88.58% specificity.
Outperforms existing state-of-the-art methods.
Demonstrates effectiveness in simulated real-life noise conditions.
Abstract
Cough is a protective reflex conveying information on the state of the respiratory system. Cough assessment has been limited so far to subjective measurement tools or uncomfortable (i.e., non-wearable) cough monitors. This limits the potential of real-time cough monitoring to improve respiratory care. Objective: This paper presents a machine hearing system for audio-based robust cough segmentation that can be easily deployed in mobile scenarios. Methods: Cough detection is performed in two steps. First, a short-term spectral feature set is separately computed in five predefined frequency bands: [0, 0.5), [0.5, 1), [1, 1.5), [1.5, 2), and [2, 5.5125] kHz. Feature selection and combination are then applied to make the short-term feature set robust enough in different noisy scenarios. Second, high-level data representation is achieved by computing the mean and standard deviation of…
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Taxonomy
MethodsSparse Evolutionary Training · Feature Selection
