连续语音识别中对数线性声学模型的特征研究

Simon Wiesler, M. Nußbaum-Thom, G. Heigold, R. Schlüter, H. Ney
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引用次数: 22

摘要

以高斯混合模型为发射概率(ghmm)的隐马尔可夫模型是所有先进语音识别系统的基础结构。使用高斯混合分布遵循生成方法,其中对类条件概率进行建模,尽管对于分类只需要后验概率。虽然在自然语言处理(NLP)等相关任务中非常成功,但在语音识别中,使用对数线性模型直接对后验概率进行建模的方法很少,也没有成功地应用于连续语音识别。在本文中,我们报告了一个具有对数线性声学模型的语音识别器在华尔街日报语料库上的竞争结果,这是一个大词汇量连续语音识别(LVCSR)任务。我们从头开始训练这个模型,即不依赖于现有的GHMM系统。以前已经提出在对数线性模型中使用数据相关的稀疏特征。我们将它们与多项式特征进行了比较,并表明多项式特征与数据相关的稀疏特征相结合可以获得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigations on features for log-linear acoustic models in continuous speech recognition
Hidden Markov Models with Gaussian Mixture Models as emission probabilities (GHMMs) are the underlying structure of all state-of-the-art speech recognition systems. Using Gaussian mixture distributions follows the generative approach where the class-conditional probability is modeled, although for classification only the posterior probability is needed. Though being very successful in related tasks like Natural Language Processing (NLP), in speech recognition direct modeling of posterior probabilities with log-linear models has rarely been used and has not been applied successfully to continuous speech recognition. In this paper we report competitive results for a speech recognizer with a log-linear acoustic model on the Wall Street Journal corpus, a Large Vocabulary Continuous Speech Recognition (LVCSR) task. We trained this model from scratch, i.e. without relying on an existing GHMM system. Previously the use of data dependent sparse features for log-linear models has been proposed. We compare them with polynomial features and show that the combination of polynomial and data dependent sparse features leads to better results.
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