使用发音特征进行说话者验证的自适应条件发音建模

Ka-Yee Leung, M. Mak, M. Siu, S. Kung
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摘要

本文提出了一种基于发音特征的条件发音建模(AFCPM)技术。该技术通过在说话者发出的实际电话和说话时的发音状态之间建立联系来模拟说话者的发音行为。使用MAP自适应技术,从一组通用背景模型(UBM)中改编由两个发音类的条件概率组成的说话人模型。这种自适应方法旨在防止在说话人数据量不足以进行直接估计时过度拟合说话人模型。实验结果表明,该自适应技术通过在说话人模型和UBM之间建立更紧密的耦合,提高了说话人模型的识别能力。结果还表明,融合基于afcpm的系统和传统的基于光谱的系统获得的分数,其错误率明显低于单个系统。这表明AFCPM和光谱特征是互补的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive conditional pronunciation modeling using articulatory features for speaker verification
This paper proposes an articulatory feature-based conditional pronunciation modeling (AFCPM) technique for speaker verification. The technique models the pronunciation behavior of speakers by creating a link between the actual phones produced by the speakers and the state of articulations during speech production. Speaker models consisting of conditional probabilities of two articulatory classes are adapted from a set of universal background models (UBM) using the MAP adaptation technique. This adaptation approach aims to prevent over-fitting the speaker models when the amount of speaker data is insufficient for a direct estimation. Experimental results show that the adaptation technique can enhance the discriminating power of speaker models by establishing a tighter coupling between speaker models and the UBM. Results also show that fusing the scores derived from an AFCPM-based system and a conventional spectral-based system achieves a significantly lower error rate than that of the individual systems. This suggests that AFCPM and spectral features are complementary to each other.
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