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Short Utterance Variance Modelling and Utterance Partitioning for PLDA Speaker Verification

机译:PLDA扬声器验证的短语方差建模与话语分区

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This paper analyses the short utterance probabilistic linear discriminant analysis (PLDA) speaker verification with utterance partitioning and short utterance variance (SUV) modelling approaches. Experimental studies have found that instead of using single long-utterance as enrolment data, if long enrolled-utterance is partitioned into multiple short utterances and average of short utterance i-vectors is used as enrolled data, that improves the Gaussian PLDA (GPLDA) speaker verification. This is because short utterance i-vectors have speaker, session and utterance variations, and utterance-partitioning approach compensates the utterance variation. Subsequently, SUV-PLDA is also studied with utterance partitioning approach, and utterance-partitioning-based SUV-GPLDA system shows relative improvement of 9% and 16% in EER for NIST 2008 and NIST 2010 truncated 10sec-10sec evaluation condition as utterance-partitioning approach compensates the utterance variation and SUV modelling approach compensates the mismatch between full-length development data and short-length evaluation data.
机译:本文分析了具有话语分区和短语差异(SUV)建模方法的短语概率线性判别分析(PLDA)讲话验证。实验研究发现,如果长长的登记讲话,而不是使用单长声作为注册数据,如果长期登记讲话,并且短语I载体的平均值用作注册数据,则可以改善高斯PLDA(GPLDA)扬声器确认。这是因为短语I - 载体具有扬声器,会话和话语变化,并且话语分区方法补偿了话语变化。随后,SUV-PLDA也用话语分配方法研究,并且基于话语分配的SUV-GPLDA系统显示了NIST 2008的EER中的9%和16%的相对提高,NIST 2010截断的10SEC-10SEC评估条件作为话语分区方法补偿话语变化和SUV建模方法补偿全长开发数据和短度评估数据之间的不匹配。

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