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Speaker recognition based on principal component analysis of LPCC and MFCC

机译:基于LPCC和MFCC主成分分析的说话人识别

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This paper introduces a new method of extracting mixed characteristic parameters using the principal component analysis (PCA), this method proposed is based on widely use of the PCA and K-means clustering in image and speech signal processing. The first work is systematic study of extracting algorithm and theory for speaker recognition system, which is on the most commonly used LPCC (Linear Prediction Cepstrum Coefficient), MFCC (Mel Frequency Cepstrum Coefficient) and differential parameter. Therefore, we select combination of the LPCC, MFCC and the first-order differential parameter as the characteristic parameter. After calculating by means of PCA, the characteristic parameter reduce the orders of each frame of speech signal, and then reduce the frame numbers through the K-means clustering , finally recognizing speaker by VQ. The experimental results show that, this method not only reduces the computational complexity, but also increases correct recognition rate.
机译:本文介绍了一种基于主成分分析(PCA)提取混合特征参数的新方法,该方法是基于PCA和K-means聚类在图像和语音信号处理中的广泛应用而提出的。第一项工作是对说话人识别系统的提取算法和理论进行系统的研究,它涉及最常用的LPCC(线性预测倒谱系数),MFCC(梅尔频率倒谱系数)和微分参数。因此,我们选择LPCC,MFCC和一阶微分参数的组合作为特征参数。特征参数经过PCA计算后,降低语音信号每一帧的阶次,然后通过K均值聚类减少帧数,最终由VQ识别出说话人。实验结果表明,该方法不仅降低了计算复杂度,而且提高了正确识别率。

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