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Durations of Context-Dependent Phonemes: A New Feature in Speaker Verification

机译:上下文相关音素的持续时间:说话者验证的新功能

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We present a text-dependent speaker verification system based on Hidden Markov Models. A set of features, based on the temporal duration of context-dependent phonemes, is used in order to distinguish amongst speakers. Our approach was tested using the YOHO corpus; it was found that the HMM-based system achieved an equal error rate (EER) of 0.68% using conventional (acoustic) features and an EER of 0.32% when the time features were combined with the acoustic features. This compares well with state-of-the-art results on the same test, and shows the value of the temporal features for speaker verification. These features may also be useful for other purposes, such as the detection of replay attacks, or for improving the robustness of speaker-verification systems to channel or speaker variations. Our results confirm earlier findings obtained on text-independent speaker recognition [1] and text-dependent speaker verification [2] tasks, and contain a number of suggestions on further possible improvements.
机译:我们提出基于文本的说话人验证系统基于隐马尔可夫模型。基于上下文相关音素的时间持续时间,使用一组功能来区分说话者。我们的方法已使用YOHO语料库进行了测试;结果发现,基于HMM的系统使用常规(声学)特征可实现0.68%的均等误码率(EER),将时间特征与声学特征结合时可实现0.32%的EER。这与同一测试中的最新结果很好地比较,并显示了用于说话人验证的时间特征的价值。这些功能还可用于其他目的,例如检测重放攻击,或用于提高扬声器验证系统对声道或扬声器变化的鲁棒性。我们的结果证实了先前在与文本无关的说话人识别[1]和与文本无关的说话人验证[2]任务上获得的发现,并包含许多关于进一步可能改进的建议。

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