使用语音特征的高斯密度动态共享

Kyung-Tak Lee, C. Wellekens
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引用次数: 2

摘要

本文描述了一种通过在语音模型之间动态共享高斯密度来使识别器适应语音变化的方法。该方法分为三个步骤。首先,给定一个输入话语,HMM识别器输出一个最有可能的单词假设的格。然后,通过将理论语音特征与语音自动提取的语音特征进行比较,对每个假设的标准语音进行检验。如果比较表明假设的音素可能被不同地发音,则通过与其可能的替代电话实现共享其高斯密度来转换其模型。最后,将变换后的模型用于二次识别。分享是动态的,因为它们会自动适应每个输入的语音。实验表明,与基线相比,单词错误率相对降低了5.4%,与静态方法相比,错误率相对降低了2.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic sharings of Gaussian densities using phonetic features
This paper describes a way to adapt the recognizer to pronunciation variability by dynamically sharing Gaussian densities across phonetic models. The method is divided in three steps. First, given an input utterance, an HMM recognizer outputs a lattice of the most likely word hypotheses. Then, the canonical pronunciation of each hypothesis is checked by comparing its theoretical phonetic features to those automatically extracted from speech. If the comparisons show that a phoneme of an hypothesis has likely been pronounced differently, its model is transformed by sharing its Gaussian densities with the ones of its possible alternate phone realization(s). Finally, the transformed models are used in a second-pass recognition. Sharings are dynamic because they are automatically adapted to each input speech. Experiments showed a 5.4% relative reduction in word error rate compared to the baseline and a 2.7% compared to a static method.
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