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Speaker Verification Using LR-based Composite Sequence Kernel for Improving the Characterization of the Alternative Hypothesis

机译:使用基于LR的复合序列内核的说话人验证,以改善替代假设的特征

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The likelihood ratio (LR)-based speaker verification is usually difficult to characterize the alternative hypothesis precisely. To better characterize the alternative hypothesis, we propose to incorporate two effective speaker verification approaches based on weighted geometric combination (WGC) and weighted arithmetic combination (WAC) into the support vector machine (SVM) via a new sequence kernel function, named the LR-based composite sequence kernel. This new kernel can be regarded as a unified framework for characterizing the alternative hypothesis by virtue of the complementary information that the WGC and WAC approaches can contribute. Our experiment results show that the proposed sequence kernel method outperforms the conventional speaker verification approaches.
机译:基于似然比(LR)的说话人验证通常很难准确地描述替代假设。为了更好地刻画替代假设,我们建议通过一种名为LR-的新序列核函数,将基于加权几何组合(WGC)和加权算术组合(WAC)的两种有效的说话人验证方法合并到支持向量机(SVM)中。基于复合序列内核。通过WGC和WAC方法可以提供的补充信息,可以将此新内核视为表征替代假设的统一框架。我们的实验结果表明,所提出的序列核方法优于传统的说话人验证方法。

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