Segmentation of Phonocardiograms Signal

Jamuna Kaushik, Abhishek Misal
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引用次数: 1

Abstract

Heart sound is a kind of bio-sound, mainly through the media pass sound signals. The measures of the heart sound signals involved in acoustics, fluid mechanics research. when added some noise for selecting pure PCG signal by using adaptive white Gaussian noise. Than denoise the PCG signal by using Discrete Wavelet transform and decomposes a signal into a 4 level of basic functions. These basic functions are called Discrete wavelet transform (DWT), which transforms a discrete time signal to a discrete wavelet representation. Experiments are conducted on 23 different recordings of heart sound where experiment working on 2 normal signal and 19 Abnormal signals where working on the accuracy of the PCG signal that is depending on the training and testing data. Segmentation process based on Shannon entropy method for low amplitude and GSF is based on high amplitude. Toward this objective, after preprocessing the PCG signal, for feature extraction of the PCG signal fixed windows were moved on the preprocessed signal, and in each analysis window, two frequency-and amplitude-based features were calculated from the excerpted segment. In order to recognize the delineated PCG sounds, ?rst, S1 and S2 were detected. Then, a new DS was regenerated from the signal whose S1 and S2 were eliminated to detect occasional S3 and S4 sounds. Finally, probable murmurs and souf?es were spotted. The proposed algorithm was applied to 6 beat PCG. signals gathered from patients with different valve diseases. This feature Extraction of the PCG signal is use PCA for reducing 216 dimensions to 7 dimensions of the PCG signal. and the classifier is used SVM method which is found the normal and abnormal heart sound of the PCG signal.
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心音图信号的分割
心音是生物声的一种,主要通过介质传递声音信号。心音信号的测量涉及声学、流体力学的研究。采用自适应高斯白噪声选择纯PCG信号。然后利用离散小波变换对PCG信号进行降噪,并将信号分解为4级基本函数。这些基本函数被称为离散小波变换(DWT),它将离散时间信号转换为离散小波表示。实验对23个不同的心音记录进行了实验,其中实验对2个正常信号和19个异常信号进行了实验,其中对PCG信号的准确性进行了研究,这取决于训练和测试数据。基于Shannon熵法的低幅值分割和基于GSF的高幅值分割。为此,在对PCG信号进行预处理后,对PCG信号进行特征提取,在预处理后的信号上移动固定的窗口,在每个分析窗口中,从提取的片段中计算两个基于频率和幅度的特征。为了识别所描绘的PCG音,我们检测了?rst、S1和S2。然后,从去除S1和S2的信号中再生一个新的DS,以检测偶尔出现的S3和S4声音。最后,可能有杂音和鼻音?他被发现了。将该算法应用于6拍PCG。来自不同瓣膜疾病患者的信号。PCG信号的特征提取是利用PCA将216维的PCG信号降维为7维。分类器采用支持向量机方法对心音信号的正常和异常进行分类。
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