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Gender independent discriminative speaker recognition in i-vector space

机译:i向量空间中性别无关的歧视性说话人识别

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Speaker recognition systems attain their best accuracy when trained with gender dependent features and tested with known gender trials. In real applications, however, gender labels are often not given. In this work we illustrate the design of a system that does not make use of the gender labels both in training and in test, i.e. a completely Gender Independent (GI) system. It relies on discriminative training, where the trials are i-vector pairs, and the discrimination is between the hypothesis that the pair of feature vectors in the trial belong to the same speaker or to different speakers. We demonstrate that this pairwise discriminative training can be interpreted as a procedure that estimates the parameters of the best (second order) approximation of the log-likelihood ratio score function, and that a pairwise SVM can be used for training a gender independent system. Our results show that a pairwise GI SVM, saving memory and execution time, achieves on the last NIST evaluations state-of-the-art performance, comparable to a Gender Dependent(GD) system.
机译:说话者识别系统经过性别依赖性特征训练并通过已知的性别试验进行测试时,可以达到最佳准确性。但是,在实际应用中,通常不会提供性别标签。在这项工作中,我们说明了在培训和测试中均不使用性别标签的系统的设计,即完全不依赖性别(GI)的系统。它依赖于判别训练,其中的试验是i-vector对,而对试验中的特征向量对属于同一说话者或不同说话者的假设之间的区别是存在的。我们证明,这种成对的判别式训练可以解释为一种估计对数似然比得分函数的最佳(二阶)近似参数的过程,并且成对的SVM可以用于训练性别无关的系统。我们的结果表明,成对的GI SVM可以节省内存和缩短执行时间,在最新的NIST评估中达到了与性别依赖(GD)系统相当的最新性能。

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