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ARTICULATORY-FEATLRE BASED SEQUENCE KERNEL FOR HIGH-LEVEL SPEAKER VERIFICATION

机译:基于说话人喜欢的序列核的高阶扬声器验证

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Research has shown that articulatory feature-based phonetic-class pronunciation models (AFCPMs) can capture the pronunciation characteristics of speakers. However, the scoring method used in AFCPMs does not explicitly use the discriminative information available in the training data. To harness this information, this paper proposes converting speaker models to supervectors by stacking the discrete densities in AFCPMs. An AF-kernel is constructed from the supervectors of target speakers, background speakers, and claimants. An AF-kernel based SVM is then trained to classify the super-vectors. Results show that AR-kemel scoring is complementary to likelihood-ratio scoring, leading to better performance when the two scoring methods are combined.
机译:研究表明,基于发音特征的语音类发音模型(AFCPM)可以捕获说话者的发音特征。但是,AFCPM中使用的评分方法未明确使用训练数据中可用的区分性信息。为了利用此信息,本文建议通过堆叠AFCPM中的离散密度将扬声器模型转换为超向量。 AF内核是由目标说话者,背景说话者和索赔者的超向量构成的。然后训练基于AF内核的SVM对超向量进行分类。结果表明,AR-kemel评分与似然比评分是互补的,当两种评分方法结合使用时,可以得到更好的性能。

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