基于遗传算法的PCG信号从语音和PCG混合信号中分离

J. Singh, P. Lehana
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引用次数: 0

摘要

本文的目的是从声心图信号和语音信号的混合信号中分离声心图信号。因此,采用基于遗传算法的滤波器组方法对信号进行分离。在该技术中,先对语音信号进行修改,然后从混合信号中减去语音信号,得到PCG信号。通过修改短时傅里叶变换幅度响应来对语音进行修改。幅度响应进一步分解为9个滤波器组,每个滤波器组带宽为50 Hz,最高可达450 Hz。各滤波带的幅度分量随遗传算法权重的变化而变化。相位分量未修改。利用基于梅尔频率倒谱系数(MFCCs)的马氏距离测量和语音质量感知评价对提取的PCG信号进行评价。实验结果表明,当种群大小为30,权重个数为10,迭代次数小于80时,遗传算法对PCG信号形态混合物的提取效果良好。所提出的技术比FastICA具有更好的精度,然而,基于ga的滤波器组的主要限制是由于涉及迭代行为而产生的时间复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Separation of PCG signal from Mixture of Speech and PCG Signals with Genetic Algorithm-Based Filter Banks
The aim of the paper is to separate the phonocardiographic (PCG) signal from the mixture of PCG and speech signals. Therefore, genetic algorithm (GA) based filter-banks approach has been used to separate the signal. In this proposed technique, speech signal was modified and then subtracted from mixed signal to obtain the PCG signal. The modification in the speech was performed by modifying the short-time Fourier transform magnitude response. The magnitude response was further decomposed into nine filter-banks, each of bandwidth 50 Hz, upto 450 Hz. The magnitude components in each filter-band were varied with the weights of GA. The phase component was not modified. Extracted PCG signals were evaluated using Mel-frequency cepstral coefficients (MFCCs) based Mahalanobis distance measure and perceptual evaluation of speech quality. It is observed that GA performs well to extract PCG signal form mixture, with population size 30, number of weights 10 and the number of iterations less than 80. The proposed technique shows better accuracy than FastICA, however, the main limitation of the GA-based filter banks is the time complexity arising due to the involvement of iterative behavior.
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