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Individual Dimension Gaussian Mixture Model for Speaker Identification

机译:用于说话人识别的单维高斯混合模型

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In this paper, Individual Dimension Gaussian Mixture Model (IDGMM) is proposed for speaker identification. As to the training-purpose feature vector series of a certain register, its joint probability distribution function (PDF) of is modeled by the product of the PDF of each dimension (marginal PDF), the scalar-based Gaussian Mixture Model (GMM) serving as the marginal PDF. For a good discriminative capability, the decorrelation by Schmidt orthogonalization and the Mixture Component Number (MCN) decision are adopted during the train. A close-set text-independent speaker identification experiment is also given. The simulation result shows that the IDGMM accelerates the training process remarkably and maintains the discriminative capability in testing process. ...
机译:本文提出了个体维高斯混合模型(IDGMM)用于说话人识别。对于某个寄存器的训练特征向量系列,其联合概率分布函数(PDF)由各个维度的PDF(边际PDF),基于标量的高斯混合模型(GMM)服务的乘积建模。作为边际PDF。为了具有良好的判别能力,在火车期间采用通过Schmidt正交化的去相关和混合成分数(MCN)决策。还给出了与文本无关的封闭式说话人识别实验。仿真结果表明,IDGMM可以显着加快训练过程,并在测试过程中保持判别能力。 ...

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