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Speaker verification using speaker- and test-dependent fast score normalization

机译:使用与说话者和测试有关的快速得分归一化的说话者验证

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摘要

A novel score normalization scheme for speaker verification is presented. The proposed technique is based on the widely used test-normalization method (Tnorm), which compensates test-dependent variability using a fixed cohort of impostors. The new procedure selects a speaker-dependent subset of impostor models from the fixed cohort using a distance-based criterion. Selection of the sub-cohort is made using a distance measure based on a fast approximation of the Kullback-Leibler (KL) divergence for Gaussian mixture models (GMM). The proposed technique has been called KL-Tnorm, and outperforms Tnorm in computational efficiency. Experimental results using NIST 2005 Speaker Recognition Evaluation protocol also show a stable performance improvement of our method on standard speaker recognition systems.
机译:提出了一种用于说话人验证的新颖分数归一化方案。提出的技术基于广泛使用的测试归一化方法(Tnorm),该方法使用固定的冒名顶替者补偿依赖于测试的可变性。新程序使用基于距离的标准从固定队列中选择与说话者相关的假冒者模型子集。使用基于高斯混合模型(GMM)的Kullback-Leibler(KL)散度的快速逼近的距离量度来选择子队列。所提出的技术称为KL-Tnorm,在计算效率方面优于Tnorm。使用NIST 2005说话人识别评估协议的实验结果还表明,我们的方法在标准说话人识别系统上的性能得到了稳定的提高。

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