论文标题
COVID-19和计算机试镜:概述哪些语音和声音分析可能在SARS-COV-2 Corona危机中贡献
COVID-19 and Computer Audition: An Overview on What Speech & Sound Analysis Could Contribute in the SARS-CoV-2 Corona Crisis
论文作者
论文摘要
在撰写本文时,自三个月前,现在正式被称为SARS-COV-2,世界人口遭受了10,000多名注册Covid-19疾病疾病诱发的疾病诱发死亡。从那以后,全世界已在全球范围内采取了巨大的努力来对抗和控制流行病,现在被标记为大流行。在这项贡献中,我们提供了有关计算机试听潜力(CA)的概述,即通过人工智能对语音和声音分析的使用来帮助这种情况。我们首先调查哪些类型的相关或上下文重要现象可以自动从语音或声音中评估。这些包括自动识别和监测呼吸,干燥和湿的咳嗽或打喷嚏的声音,寒冷下的言语,饮食行为,嗜睡或疼痛,只有几个。然后,我们考虑剥削的潜在用例。这些包括根据症状直方图及其随着时间的流逝发展以及对传播,社会疏远及其影响,治疗和康复以及患者健康的监测的风险评估和诊断。我们很快就可以进一步指导需要面对现实生活中的挑战。我们得出的结论是,CA似乎已经准备好实施(前)诊断和监测工具,并且更普遍地提供了丰富而重要的,但到目前为止,在与COVID-19的斗争中尚未开发的潜力。
At the time of writing, the world population is suffering from more than 10,000 registered COVID-19 disease epidemic induced deaths since the outbreak of the Corona virus more than three months ago now officially known as SARS-CoV-2. Since, tremendous efforts have been made worldwide to counter-steer and control the epidemic by now labelled as pandemic. In this contribution, we provide an overview on the potential for computer audition (CA), i.e., the usage of speech and sound analysis by artificial intelligence to help in this scenario. We first survey which types of related or contextually significant phenomena can be automatically assessed from speech or sound. These include the automatic recognition and monitoring of breathing, dry and wet coughing or sneezing sounds, speech under cold, eating behaviour, sleepiness, or pain to name but a few. Then, we consider potential use-cases for exploitation. These include risk assessment and diagnosis based on symptom histograms and their development over time, as well as monitoring of spread, social distancing and its effects, treatment and recovery, and patient wellbeing. We quickly guide further through challenges that need to be faced for real-life usage. We come to the conclusion that CA appears ready for implementation of (pre-)diagnosis and monitoring tools, and more generally provides rich and significant, yet so far untapped potential in the fight against COVID-19 spread.