Dry and Wet Cough Detection using Fusion of Cepstral base Statistical Features

Shweta Pande, A. Patil, S. Petkar
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引用次数: 2

Abstract

Nowadays with technological advancements, ma-chine learning is widely used in healthcare sector to help patients and doctors. Machine learning offers various tools for healthcare to diagnose various diseases in effective manner. In clinical diagnosis machine learning is used to analyse audio recording of coughs in order to detect respiratory illness. To clear lung and throat from any foreign substance, human body’s inundate mechanism create a substance called Cough. Audio recordings of coughs consists of patterns and depending on the pattern, cough can be classified as wet cough and dry cough. The COUGHVID dataset consists of more than 20,000 audio recordings of cough which includes wide range of subject such as gender, ages, geographic locations, from which more than 2000 recording are labelled by medical experts to diagnose abnormalities present in cough. In this paper, fusion of different cepstral based statistical features and classification using machine learning algorithm is presented. After analysis, it is observed that through ADASYN oversampling highest accuracy of 85.84%, f1 score of 86.80% and the area under the curve as 0.857 is achieved for MLP model.
基于倒谱基统计特征融合的干湿咳嗽检测
如今,随着技术的进步,机器学习被广泛应用于医疗保健领域,以帮助患者和医生。机器学习为医疗保健提供了各种工具,可以有效地诊断各种疾病。在临床诊断中,机器学习被用来分析咳嗽的录音,以检测呼吸系统疾病。为了清除肺部和喉咙中的异物,人体的排洪机制会产生一种叫做咳嗽的物质。咳嗽的录音由模式组成,根据模式,咳嗽可分为湿咳和干咳。COUGHVID数据集由2万多段咳嗽录音组成,其中包括性别、年龄、地理位置等广泛的主题,医学专家对2000多段录音进行了标记,以诊断咳嗽中的异常情况。本文提出了一种基于倒谱的统计特征融合与分类的机器学习算法。经分析可知,通过ADASYN过采样,MLP模型的最高准确率为85.84%,f1得分为86.80%,曲线下面积为0.857。
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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