| Literature DB >> 34026854 |
Quan Zhou1, Jianhua Shan1, Wenlong Ding1, Chengyin Wang1, Shi Yuan1, Fuchun Sun2, Haiyuan Li3, Bin Fang2.
Abstract
In daily life, there are a variety of complex sound sources. It is important to effectively detect certain sounds in some situations. With the outbreak of COVID-19, it is necessary to distinguish the sound of coughing, to estimate suspected patients in the population. In this paper, we propose a method for cough recognition based on a Mel-spectrogram and a Convolutional Neural Network called the Cough Recognition Network (CRN), which can effectively distinguish cough sounds.Entities:
Keywords: CNN; COVID-19; audio; cough recognition; deep learning; mel-spectrogram
Year: 2021 PMID: 34026854 PMCID: PMC8138471 DOI: 10.3389/frobt.2021.580080
Source DB: PubMed Journal: Front Robot AI ISSN: 2296-9144
FIGURE 1The work-flow diagram.
FIGURE 2Mel-spectrograms of different voices.
FIGURE 3Data components.
FIGURE 4The Architecture of the Mel-spectrogram and CNN model.
The comparison results of different methods.
| Methods | Random division recognition task | No-leakage division recognition task | ||||||
|---|---|---|---|---|---|---|---|---|
| Accuracy (%) | Recall (%) | Precision (%) | F1 Score (%) | Accuracy (%) | Recall (%) | Precision (%) | F1 Score (%) | |
| Mel-spectrogram + CNN | 98.18 | 99.18 | 99.28 | 99.23 | 95.18 | 93.33 | 100 | 96.55 |
| Mel-spectrogram + BP | 94.34 | 87.50 | 100 | 93.33 | 91.44 | 93.75 | 93.75 | 93.75 |
| MFCC + CNN | 97.43 | 88.88 | 100 | 94.12 | 94.04 | 100 | 88.88 | 94.11 |
| MFCC + BP | 96.12 | 97.19 | 93.87 | 97.19 | 93.45 | 90.91 | 100 | 95.23 |
| MFCC + SVM | 95.76 | 96.99 | 94.57 | 95.77 | 93.29 | 93.56 | 91.79 | 92.67 |
| MFCC + K-means | 52.93 | 42.86 | 53.09 | 47.43 | 50.34 | 42.44 | 44.96 | 43.66 |
| MFCC + Naive-bayes | 88.57 | 95.31 | 83.83 | 89.20 | 78.81 | 82.43 | 73.87 | 77.92 |
| MFCC + LightGBM | 95.73 | 98.46 | 93.29 | 95.80 | 89.89 | 88.17 | 89.38 | 88.77 |
FIGURE 5The loss of the random division experiment.
FIGURE 6The loss of the no-leakage division experiment.