The Second DiCOVA Challenge aims at accelerating the research in diagnosing COVID-19 using acoustics (DiCOVA), a topic at the intersection of acoustics signal processing, machine learning, and healthcare. This challenge is an open call to researchers to analyze a dataset of audio recordings, collected from individuals with and without COVID-19, for a two-class classification. The development set audio recordings correspond to breathing, cough, and speech sound samples collected from 965 (172 COVID) individuals. The challenge features four tracks, one associated with each sound category and a fourth fusion track allowing experimentation with combination of the individual sound categories. In this paper, we introduce the challenge and provide a detailed description of the task and a baseline system.
翻译:第二次DiCOVA挑战旨在加速对利用声学(DiCOVA)诊断COVID-19的研究,这是声学信号处理、机器学习和保健交叉点的一个专题,这项挑战是公开呼吁研究人员分析一套录音数据集,从有COVID-19的个人收集录音资料,分为两类,开发录音资料相当于从965人(172 COVID)收集的呼吸、咳嗽和语音声音样本,挑战有四个轨道,每个声音类别一个,第四个集成轨道,可以将个别声学类别结合起来进行试验,我们在本文件中提出挑战,并详细说明任务和基线系统。