基于字素词典的声学单元发现和发音生成

William Hartmann, A. Roy, L. Lamel, J. Gauvain
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引用次数: 19

摘要

我们提出了一个框架,用于发现声学单位,并从初始的基于字素的识别系统中生成相关的发音词典。我们的方法包括两个不同的贡献。首先,使用光谱聚类方法对上下文相关的字素模型进行聚类,以创建一组类似电话的声学单元。接下来,我们使用基于统计机器翻译的方法对发音词典进行转换。从训练集的解码中产生的发音假设用于创建基于短语的翻译表。我们提出了一种新的基于短语的规则评分方法,该方法显著提高了转换过程的输出。在英语语言数据集上的结果表明,与基于字形的基准系统相比,组合方法的单词错误率相对降低了13%。我们的方法可以潜在地应用于没有现有词典的低资源语言,比如Babel项目。
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Acoustic unit discovery and pronunciation generation from a grapheme-based lexicon
We present a framework for discovering acoustic units and generating an associated pronunciation lexicon from an initial grapheme-based recognition system. Our approach consists of two distinct contributions. First, context-dependent grapheme models are clustered using a spectral clustering approach to create a set of phone-like acoustic units. Next, we transform the pronunciation lexicon using a statistical machine translation-based approach. Pronunciation hypotheses generated from a decoding of the training set are used to create a phrase-based translation table. We propose a novel method for scoring the phrase-based rules that significantly improves the output of the transformation process. Results on an English language dataset demonstrate the combined methods provide a 13% relative reduction in word error rate compared to a baseline grapheme-based system. Our approach could potentially be applied to low-resource languages without existing lexicons, such as in the Babel project.
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