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首页> 外文期刊>IEEE transactions on audio, speech and language processing >A Study of Interspeaker Variability in Speaker Verification
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A Study of Interspeaker Variability in Speaker Verification

机译:说话人验证中的说话人间变异性研究

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摘要

We propose a new approach to the problem of estimating the hyperparameters which define the interspeaker variability model in joint factor analysis. We tested the proposed estimation technique on the NIST 2006 speaker recognition evaluation data and obtained 10%–15% reductions in error rates on the core condition and the extended data condition (as measured both by equal error rates and the NIST detection cost function). We show that when a large joint factor analysis model is trained in this way and tested on the core condition, the extended data condition and the cross-channel condition, it is capable of performing at least as well as fusions of multiple systems of other types. (The comparisons are based on the best results on these tasks that have been reported in the literature.) In the case of the cross-channel condition, a factor analysis model with 300 speaker factors and 200 channel factors can achieve equal error rates of less than 3.0%. This is a substantial improvement over the best results that have previously been reported on this task.
机译:我们提出了一种新方法,用于估计在联合因子分析中定义扬声器间变异性模型的超参数的问题。我们在NIST 2006说话人识别评估数据上测试了建议的估计技术,并在核心条件和扩展数据条件(通过相等的错误率和NIST检测成本函数衡量)上,将错误率降低了10%–15%。我们表明,当以这种方式训练大型联合因子分析模型并在核心条件,扩展数据条件和跨渠道条件下进行测试时,它至少能够执行以及其他类型的多个系统的融合。 (比较是基于文献中报告的这些任务的最佳结果。)在跨渠道条件下,具有300个说话者因素和200个渠道因素的因素分析模型可以实现小于高于3.0%。这是对以前在此任务上报告的最佳结果的重大改进。

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