COVID-19 Detection from Speech in Noisy Conditions

Shuo Liu, Adria Mallol-Ragolta, B. Schuller
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Abstract

We explore the integration of audio enhancement into a speech-based COVID-19 detection system in an attempt to make speech captured in noisy environments from everyday life useful for the detection of the virus. For this purpose, two multi-task learning approaches are exploited to jointly optimise a front-end speech enhancement model and a subsequent COVID-19 detection model. In comparison to several baseline methods, such as noisy data augmentation, cold cascade of speech enhancement, and COVID-19 models, our proposed solutions are able to recover a substantial percentage of the performance reduction caused by real-world noises. Our best-performing model, which is trained using the synthetic data of the DiCOVA speech corpus and AudioSet environmental backgrounds, can achieve an average AUC of 76.87 % on the test data covering a wide range of noise intensities, which is over 10 % better than a COVID-19 model trained with clean audio.
基于噪声条件下语音的COVID-19检测
我们探索将音频增强集成到基于语音的COVID-19检测系统中,试图使在日常生活中嘈杂环境中捕获的语音对病毒检测有用。为此,利用两种多任务学习方法共同优化前端语音增强模型和后续COVID-19检测模型。与几种基准方法(如噪声数据增强、语音冷级联增强和COVID-19模型)相比,我们提出的解决方案能够恢复由现实世界噪声引起的性能下降的很大比例。我们表现最好的模型是使用DiCOVA语音语料库和AudioSet环境背景的合成数据训练的,在覆盖广泛噪声强度的测试数据上,平均AUC可以达到76.87%,比使用干净音频训练的COVID-19模型高出10%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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