Lately, there has been a global effort by multiple research groups to detect COVID-19 from voice. Different researchers use different kinds of information from the voice signal to achieve this. Various types of phonated sounds and the sound of cough and breath have all been used with varying degree of success in automated voice-based COVID-19 detection apps. In this paper, we show that detecting COVID-19 from voice does not require custom-made non-standard features or complicated neural network classifiers rather it can be successfully done with just standard features and simple binary classifiers. In fact, we show that the latter is not only more accurate and interpretable but also more computationally efficient in that they can be run locally on small devices. We demonstrate this on a human-curated dataset of over 1000 subjects, collected and calibrated in clinical settings.
翻译:最近,多个研究团体在全球范围内努力从声音中检测COVID-19。不同的研究人员使用声音信号中不同种类的信息来实现这一目标。在自动语音的COVID-19检测应用程序中,各种录音声音和咳嗽和呼吸的声音都得到了不同程度的成功使用。在本文中,我们表明从声音中检测COVID-19并不要求定制的非标准特征或复杂的神经网络分类器,而是可以通过标准特征和简单的二元分类器来成功完成。事实上,我们表明后者不仅更准确、更易解释,而且更具有计算效率,因为可以在小的装置上本地运行。我们在由人类制作的由1000多个主题组成的数据集上展示了这一点,这些数据在临床环境中收集和校准。