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Speaker Recognition Using Principal Component

机译:使用主成分的扬声器识别

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This paper propose a new feature vector-Mel Frequency Principal Coefficient (MFPC), applied to speaker recognition. It is derived by performing Principal Components Analysis on the Mel Scale Spectrum Vector. Compared with conventional Mel Frequency Cepstrum Coefficient. MFPC efficiently exploited the correlation information among different frequency channels. These correlations, which is mainly caused by the vocal tract resonance, have been found to vary consistently from one speaker to another. And we select these feature coefficients according to their Fisher Ratio, which will guarantee the largest discriminability between classes in the given dimensionality. Finally, we implement a text-independent speaker recognition system. It uses Vector Quantization to design codebooks of given reference speakers. The experiment results demonstrate that our proposed feature vector has characteristics of compactness, large discriminability and low redundancy.
机译:本文提出了一种新的特征向量 - MEL频率主系数(MFPC),适用于扬声器识别。它是通过对MEL刻度谱载体进行主成分分析来实现的。与常规MEL频率综糖系数相比。 MFPC有效地利用不同频率信道之间的相关信息。这些相关性主要由声乐道共振引起的,已被发现从一个扬声器到另一个扬声器始终如一地差异。我们根据其Fisher比选择这些特征系数,这将保证给定维度在课程中的最大差异性。最后,我们实施了一个独立于文本的扬声器识别系统。它使用矢量量化来设计给定参考扬声器的码本。实验结果表明,我们所提出的特征向量具有紧凑性,较大的辨别性和低冗余特性。

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