Distinctive Features for Classification of Respiratory Sounds Between Normal and Crackles Using Cepstral Coefficients

N. H. M. Johari, N. Malik, K. Sidek
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引用次数: 2

Abstract

Classification of respiratory sounds between normal and abnormal is very crucial for screening and diagnosis purposes. Lung associated diseases can be detected through this technique. With the advancement of computerized auscultation technology, the adventitious sounds such as crackles can be detected and therefore diagnostic test can be performed earlier. In this paper, Mel-frequency Cepstral Coefficient (MFCC) is used to extract features from normal and crackles respiratory sounds. By using statistical computation such as mean and standard deviation (SD) of cepstral based coefficients it can differentiate between crackles and normal sounds. The result shows that the first three statistical values of SD of coefficients provide distinctive feature between normal and crackles respiratory sounds. Hence, MFCCs can be used as feature extraction method of respiratory sounds to classify between normal and crackles as screening and diagnostic tool.
用倒谱系数对正常呼吸音和噼啪呼吸音进行分类的特征
呼吸音的正常与异常分类对于筛查和诊断至关重要。肺部相关疾病可通过该技术检测。随着计算机听诊技术的进步,可以检测到诸如噼啪声等外来声音,从而可以更早地进行诊断测试。本文利用Mel-frequency倒谱系数(MFCC)对正常呼吸音和裂纹呼吸音进行特征提取。通过对倒谱系数的均值和标准差(SD)进行统计计算,可以区分裂纹声和正常声音。结果表明,系数标准差的前三个统计值提供了正常呼吸声和噼啪呼吸声的显著特征。因此,MFCCs可以作为呼吸音的特征提取方法,用于区分正常和裂纹,作为筛查和诊断工具。
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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