Automatic detection and correction of syntax-based prosody annotation errors

Sandrine Brognaux, Thomas Drugman, Richard Beaufort
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引用次数: 2

Abstract

Both unit-selection and HMM-based speech synthesis require large annotated speech corpora. To generate more natural speech, considering the prosodic nature of each phoneme of the corpus is crucial. Generally, phonemes are assigned labels which should reflect their suprasegmental characteristics. Labels often result from an automatic syntactic analysis, without checking the acoustic realization of the phoneme in the corpus. This leads to numerous errors because syntax and prosody do not always coincide. This paper proposes a method to reduce the amount of labeling errors, using acoustic information. It is applicable as a post-process to any syntax-driven prosody labeling. Acoustic features are considered, to check the syntax-based labels and suggest potential modifications. The proposed technique has the advantage of not requiring a manually prosody-labelled corpus. The evaluation on a corpus in French shows that more than 75% of the errors detected by the method are effective errors which must be corrected.
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基于句法的韵律标注错误自动检测与修正
单元选择和基于hmm的语音合成都需要大量带注释的语音语料库。为了产生更自然的语音,考虑语料库中每个音素的韵律性质是至关重要的。一般来说,音素被分配的标签应该反映它们的超分段特征。标签通常是自动句法分析的结果,而不检查语料库中音素的声学实现。这导致了许多错误,因为语法和韵律并不总是一致的。本文提出了一种利用声学信息来减少标注错误的方法。它适用于任何语法驱动的韵律标记的后处理。声学特征被考虑,以检查基于语法的标签和建议潜在的修改。该技术的优点是不需要手动标记韵律的语料库。对一个法语语料库的评价表明,该方法检测到的错误中有75%以上是有效错误,必须加以纠正。
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