UFRC: A Unified Framework for Reliable COVID-19 Detection on Crowdsourced Cough Audio
We suggested a unified system with core components of data augmentation, ImageNet-pretrained ResNet-50, cost-sensitive loss, deep ensemble learning, and uncertainty estimation to quickly and consistently detect COVID-19 using acoustic evidence. To increase the model's capacity to identify a min...
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Zusammenfassung: | We suggested a unified system with core components of data augmentation,
ImageNet-pretrained ResNet-50, cost-sensitive loss, deep ensemble learning, and
uncertainty estimation to quickly and consistently detect COVID-19 using
acoustic evidence. To increase the model's capacity to identify a minority
class, data augmentation and cost-sensitive loss are incorporated (infected
samples). In the COVID-19 detection challenge, ImageNet-pretrained ResNet-50
has been found to be effective. The unified framework also integrates deep
ensemble learning and uncertainty estimation to integrate predictions from
various base classifiers for generalisation and reliability. We ran a series of
tests using the DiCOVA2021 challenge dataset to assess the efficacy of our
proposed method, and the results show that our method has an AUC-ROC of 85.43
percent, making it a promising method for COVID-19 detection. The unified
framework also demonstrates that audio may be used to quickly diagnose
different respiratory disorders. |
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DOI: | 10.48550/arxiv.2204.07763 |