基于相似度度量的咳嗽声分类

N. Petrellis, G. Adam
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引用次数: 3

摘要

咳嗽和呼吸声音处理有助于Covid-19等感染的早期诊断。如果应用适当的语音建模和信号处理,即使是无症状的Covid-19患者也可以及早诊断。Covid-19影响与呼吸、发声和发音有关的各种语音子系统。基于作者最近提出的症状跟踪平台(Coronario),我们专注于声音处理子系统,该子系统能够将咳嗽或呼吸声音分为多个类别。具体来说,我们试图将咳嗽声音文件分类为以下5类之一:男性干性或生产性,女性干性或生产性和儿童咳嗽。在频域使用Pearson相关相似度进行分类。已经测试了几种采用平均和主成分分析的替代方法来估计其召回率和精密度/准确度指标。实现的平均精密度/准确度分别约为75%和88%。使用的声音处理平台是可扩展的,允许研究人员对症状跟踪过程中交换的匿名数据应用几种不同的分类方法进行实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cough Sound Classification Based on Similarity Metrics
Cough and respiratory sound processing can assist in the early diagnosis of infections such as Covid-19. Even asymptomatic Covid-19 patients can be diagnosed early enough if appropriate speech modeling and signal-processing is applied. Covid-19 affects various speech subsystems that are involved in respiration, phonation and articulation. Based on a symptom tracking platform that was recently presented by the authors (Coronario), we focus on the sound processing subsystem that is capable of classifying cough or respiratory sounds in multiple categories. Specifically, we attempt to classify a cough sound file in one of the following 5 categories: male dry or productive, female dry or productive and child’s cough. The classification is performed using Pearson Correlation Similarity, in frequency domain. Several alternative methods that employ averaging and Principal Component Analysis have been tested to estimate their recall and precision/accuracy metrics. The average precision/accuracy achieved is about 75% and 88%, respectively. The sound processing platform used is extensible allowing researches to experiment with several different classification methods applied on the anonymized data exchanged during symptom tracking.
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