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Combining Gaussian Mixture Models and Polynomial Classifiers for Text Independent Speaker Recognition

机译:结合高斯混合模型和多项式分类器进行文本独立扬声器识别

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A framework for combining polynomial classifiers with Gaussian mixture models is given. This framework is based upon earlier work combining hidden Markov models and polynomial classifiers for text-prompted speaker recognition. The basic idea is to use a Gaussian mixture model as a decoder and then perform final scoring with a polynomial classifier. Results for both support vector machine training and minimum mean-squared error training are given. Experiments on the NIST 1998 speaker recognition database show the viability of the method.
机译:给出了与高斯混合模型组合多项式分类器的框架。此框架基于早期的工作,组合隐藏的马尔可夫模型和多项式分类器进行文本提示扬声器识别。基本思想是使用高斯混合模型作为解码器,然后用多项式分类器执行最终评分。给出支持向量机训练和最低均衡错误训练的结果。 NIST 1998扬声器识别数据库的实验显示了该方法的可行性。

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