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A Lung Sound Category Recognition Method Based on Wavelet Decomposition and BP Neural Network

机译:基于小波分解和BP神经网络的肺部声音类别识别方法

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In this paper, a method of characteristic extraction and recognition on lung sounds is given. Wavelet de-noised method is adopted to reduce noise of collected lung sounds and extract wavelet characteristic coefficients of the de-noised lung sounds by wavelet decomposition. Considering the problem that lung sounds characteristic vectors are of high dimensions after wavelet decomposition and reconstruction, a new method is proposed to transform the characteristic vectors from reconstructed signals into reconstructed signal energy. In addition, we use linear discriminant analysis (LDA) to reduce the dimension of characteristic vectors for comparison in order to obtain a more efficient way for recognition. Finally, we use BP neural network to carry out lung sounds recognition where comparatively high-dimensional characteristic vectors and low- dimensional vectors are set as input and lung sounds categories as output with a recognition accuracy of 82.5% and 92.5%.
机译:本文给出了一种特征提取和肺部识别的方法。采用小波去噪方法来减少收集的肺部声音的噪音,并通过小波分解提取脱发肺部声音的小波特征系数。考虑到小波分解后肺听起来特性矢量具有高维度的问题,提出了一种新的方法,将来自重建信号的特性向量变换成重构信号能量。此外,我们使用线性判别分析(LDA)来减少特征向量的尺寸,以便比较,以获得更有效的识别方式。最后,我们使用BP神经网络来执行肺部声音识别,其中相对高的高尺寸特征向量和低维向量被设置为输入和肺部声音类别,作为输出,识别精度为82.5%和92.5%。

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