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A Comparison of Session Variability Compensation Approaches for Speaker Verification

机译:演讲者验证中的会话可变性补偿方法的比较

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This paper compares two of the leading techniques for session variability compensation in the context of support vector machine (SVM) speaker verification using Gaussian mixture model (GMM) mean supervectors: joint factor analysis (JFA) modeling and nuisance attribute projection (NAP). Motivation for this comparison comes from the distinctly different domains in which these techniques are employed—the probabilistic GMM domain versus the discriminative SVM kernel. A theoretical analysis is given comparing the JFA and NAP approaches to variability compensation. The role of speaker factors in the factor analysis model is also contrasted against the scatter difference NAP objective of retaining speaker information in the SVM kernel space. These methods for retaining speaker variation are found to provide improved verification performance over the removal of channel effects alone. Overall, experimental results on the NIST 2006 and 2008 SRE corpora demonstrate the effectiveness of both JFA and NAP techniques for reducing the effects of variability. However, the overheads associated with the implementation of JFA may make NAP a more attractive technique due to its simple yet effective approach to variability compensation.
机译:本文在使用高斯混合模型(GMM)平均超向量的支持向量机(SVM)说话者验证的背景下,比较了两种用于会话可变性补偿的领先技术:联合因子分析(JFA)建模和讨厌的属性投影(NAP)。这种比较的动机来自采用这些技术的截然不同的领域-概率GMM域与判别式SVM内核。给出了理论分析,比较了JFA和NAP的可变性补偿方法。说话人因素在因素分析模型中的作用也与将说话人信息保留在SVM内核空间中的分散差异NAP目标形成了对比。发现这些用于保持扬声器变化的方法与仅消除声道效果相比,可提供改进的验证性能。总体而言,在NIST 2006和2008 SRE语料库上的实验结果表明,JFA和NAP技术都可以有效降低可变性的影响。但是,与JFA实施相关的开销可能使NAP成为一种更具吸引力的技术,因为它是一种简单而有效的可变性补偿方法。

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