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Speaker Verification Based on Log-Likelihood Score Normalization

机译:扬声器验证基于日志似然分数标准化

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Due to differences in the distribution of scores for different trials, the performance of a speaker verification system will be seriously diminished if raw scores are directly used for detection with a unified threshold value. As such, the scores must be normalized. To tackle the shortcomings of score normalization methods, we propose a speaker verification system based on log-likelihood normalization (LLN). Without a priori knowledge, LLN increases the separation between scores of target and non-target speaker models, so as to improve score aliasing of “same-speaker” and “different-speaker” trials corresponding to the same test speech, enabling better discrimination and decision capability. The experiment shows that LLN is an effective method of scoring normalization.
机译:由于不同试验的分数分配的差异,如果原始分数直接用于以统一的阈值检测检测,将严重减少扬声器验证系统的性能。因此,必须归一化分数。为了解决分数标准化方法的缺点,我们提出了一种基于日志似然标准化(LLN)的扬声器验证系统。如果没有先验知识,LLN会增加目标和非目标扬声器模型的分数之间的分离,从而改善与相同的测试语音相对应的“同扬声器”和“不同扬声器”试验的分数别名,从而实现更好的歧视和决策能力。实验表明,LLN是评分标准化的有效方法。

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