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Improving Speaker Verification Using ALISP-Based Specific GMMs

机译:使用基于ALISP的特定GMM改进说话者验证

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摘要

In recent years, research in speaker verification has expended from using only the acoustic content of speech to trying to utilise high level features of information, such as linguistic content, pronunciation and idiolectal word usage. Phone based models have been shown to be promising for speaker verification, but they require transcribed speech data in the training phase. The present paper describes a segmental Gaussian Mixture Models (GMM) for text-independent speaker verification system based on data-driven Automatic Language Independent Speech Processing (ALISP). This system uses GMMs on a segmental level in order to exploit the different amount of discrimination provided by the ALISP classes. We compared the segmental ALISP-based GMM method with a baseline global GMM system. Results obtained for the NIST 2004 Speaker Recognition Evaluation data showed that the segmental approach outperforms the baseline system. It showed also that not all of the ALISP units are contributing to the discrimination between speakers.
机译:近年来,说话人验证的研究已从仅使用语音的声音内容扩展到尝试利用信息的高级特征,例如语言内容,发音和同义单词用法。基于电话的模型已被证明可用于说话者验证,但它们需要在训练阶段转录语音数据。本文介绍了一种基于数据驱动的自动语言无关语音处理(ALISP)的分段高斯混合模型(GMM),用于与文本无关的说话者验证系统。该系统在分段级别上使用GMM,以便利用ALISP类提供的不同数量的区分。我们将基于分段ALISP的GMM方法与基线全局GMM系统进行了比较。 NIST 2004说话者识别评估数据获得的结果表明,分段方法优于基线系统。它也表明并非所有ALISP单位都在造成说话人之间的歧视。

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