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Detecting COVID-19 from Breathing and Coughing Sounds using Deep Neural Networks
arXiv - CS - Sound Pub Date : 2020-12-29 , DOI: arxiv-2012.14553 Björn W. Schuller, Harry Coppock, Alexander Gaskell
arXiv - CS - Sound Pub Date : 2020-12-29 , DOI: arxiv-2012.14553 Björn W. Schuller, Harry Coppock, Alexander Gaskell
The COVID-19 pandemic has affected the world unevenly; while industrial
economies have been able to produce the tests necessary to track the spread of
the virus and mostly avoided complete lockdowns, developing countries have
faced issues with testing capacity. In this paper, we explore the usage of deep
learning models as a ubiquitous, low-cost, pre-testing method for detecting
COVID-19 from audio recordings of breathing or coughing taken with mobile
devices or via the web. We adapt an ensemble of Convolutional Neural Networks
that utilise raw breathing and coughing audio and spectrograms to classify if a
speaker is infected with COVID-19 or not. The different models are obtained via
automatic hyperparameter tuning using Bayesian Optimisation combined with
HyperBand. The proposed method outperforms a traditional baseline approach by a
large margin. Ultimately, it achieves an Unweighted Average Recall (UAR) of
74.9%, or an Area Under ROC Curve (AUC) of 80.7% by ensembling neural networks,
considering the best test set result across breathing and coughing in a
strictly subject independent manner. In isolation, breathing sounds thereby
appear slightly better suited than coughing ones (76.1% vs 73.7% UAR).
更新日期:2021-01-01