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Crackles detection method based on time-frequency features analysis and SVM

机译:基于时频特征分析和支持向量机的裂纹检测方法

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Crackles, which are a kind of abnormal lung sounds, are used as indicators for the diagnosis of pulmonary diseases. In this paper, an automatic and noninvasive method is presented for crackles detecting. This method mainly comprises three steps: preprocessing, features extracting and crackles detecting based on support vector machines(SVM). The features are fmin/fmax of the frequency limbic signal, standard deviation of the time limbic signal and the smoothing time limbic signal. The simulation result of the two testing groups shows that the accuracy(AC) are 97.14% and 100%, respectively, which indicates that this method could be an efficient way to detect crackles.
机译:一种异常肺部声音的裂纹用作诊断肺病的指标。本文提出了一种用于裂纹检测的自动和非侵入性方法。该方法主要包括三个步骤:预处理,基于支持向量机(SVM)提取和噼啪声检测。该特征是频率肢体信号的FMIN / FMAX,时间肢体信号的标准偏差和平滑时间肢体信号。两种测试组的仿真结果表明,精度(AC)分别为97.14%和100%,这表明该方法可以是检测噼啪的有效方法。

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