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i-Vector/PLDA speaker recognition using support vectors with discriminant analysis

机译:使用支持向量和判别分析的i-Vector / PLDA说话人识别

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i-Vector feature representation with probabilistic linear discriminant analysis (PLDA) scoring in speaker recognition system has recently achieved effective permanence even on channel mismatch conditions. In general, experiments carried out using this combined strategy employ linear discriminant analysis (LDA) after the i-Vector extraction phase to suppress irrelevant directions, such as those introduced by noise or channel distortions. However, speaker-related and -non-related variability present in the data may prevent LDA from finding the best projection matrix. In this study, we exclusively use support vectors of each class to find the optimum linear transformation. Post-processing of the i-Vectors by discriminant analysis via support vectors (SVDA) and traditional LDA is evaluated on NIST2010 speaker recognition evaluation (SRE) core and extended core (coreext) conditions. In addition, truncated coreext test data is used to examine the performance of the system for both long and short duration test segments. Computed equal error rate (EER) and minimum detection cost function (minDCF) criteria confirm consistent improvement of SVDA over traditional LDA. The relative improvement in terms of EER and minDCF with SVDA are about 32% and 9%, respectively.
机译:说话人识别系统中具有概率线性判别分析(PLDA)评分功能的i-Vector特征表示,即使在信道不匹配的情况下,也已经实现了有效的永久性。通常,使用此组合策略进行的实验在i-Vector提取阶段之后采用线性判别分析(LDA)来抑制不相关的方向,例如由噪声或通道失真引入的方向。但是,数据中存在与说话人相关和无关的可变性可能会阻止LDA找到最佳的投影矩阵。在这项研究中,我们专门使用每个类别的支持向量来找到最佳线性变换。在NIST2010说话者识别评估(SRE)核心和扩展核心(coreext)条件下,通过支持向量(SVDA)和传统LDA的判别分析对i-Vector进行后处理。此外,被截断的coreext测试数据用于检查长时间测试段和短期测试段的系统性能。计算出的均等错误率(EER)和最小检测成本函数(minDCF)标准证实了SVDA与传统LDA相比的持续改进。 SVDA的EER和minDCF的相对改善分别约为32%和9%。

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