Kahya Yasemin P, Yeginer Mete, Bilgic Bora
Dept. of Electr. Eng., Bogazici Univ., Istanbul, Turkey.
Conf Proc IEEE Eng Med Biol Soc. 2006;2006:2856-9. doi: 10.1109/IEMBS.2006.259946.
In this study, different feature sets are used in conjunction with (k-nearest neighbors) k-NN and artificial neural network (ANN) classifiers to address the classification problem of respiratory sound signals. A comparison is made between the performances of k-NN and ANN classifiers with different feature sets derived from respiratory sound data acquired from one microphone placed on the posterior chest area. Each subject is represented by a single respiration cycle divided into sixty segments from which three different feature sets consisting of 6th order AR model coefficients, wavelet coefficients and crackle parameters in addition to AR model coefficients are extracted. Classification experiments are carried out on inspiration and expiration phases separately. The two class recognition problem between healthy and pathological subjects is addressed.
在本研究中,不同的特征集与k近邻(k-NN)和人工神经网络(ANN)分类器结合使用,以解决呼吸音信号的分类问题。对k-NN和ANN分类器的性能进行了比较,这些分类器使用了从放置在后胸部区域的一个麦克风采集的呼吸音数据得出的不同特征集。每个受试者由一个单一的呼吸周期表示,该呼吸周期被分为60个段,从中提取了由六阶自回归(AR)模型系数、小波系数和除AR模型系数外的爆裂音参数组成的三个不同特征集。分类实验分别在吸气和呼气阶段进行。研究解决了健康受试者和病理受试者之间的二分类识别问题。