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Classification of respiratory sounds using crackle parameters

机译:使用裂纹参数进行呼吸声的分类

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摘要

The three-class recognition problem of respiratory sounds based on spectral estimation is addressed. Respiratory sounds of two types of pathological cases, namely, obstructive and restrictive disease patients, and healthy subjects are used to obtain feature parameters by dividing each respiratory cycle into overlapping segments and applying an ARMA model. Furthermore, crackle parameters are added to the feature space to observe whether an improvement is achieved in the classification. In this work, k-NN and multinomial classifiers are used in accordance with previous work.
机译:解决了基于频谱估计的呼吸声的三类识别问题。两种类型的病例,即阻塞性和限制性疾病患者的呼吸声,通过将每个呼吸循环除以重叠的段并施加ARMA模型来使用健康受试者和健康受试者来获得特征参数。此外,将裂纹参数添加到特征空间中以观察在分类中是否实现了改进。在这项工作中,K-NN和多项式分类器根据以前的工作使用。

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