基于DCT特征和CRF模型的重音检测与预测

Wenping Hu, Yao Qian, F. Soong
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引用次数: 0

摘要

音高重音的自动检测/预测是实现文本到语音(TTS)表达合成的关键,它能确定单词中是否存在突出音节及其对应的音高重音模式。为了训练一个模型来检测和预测音高重音,通常需要由经过语音训练的语言专家手动标记大量带注释的训练数据,这既耗时又昂贵。在本文中,我们提出了一种半自动算法来进行音高重音建模,其中由母语人士(即非语音训练的语言专家)在单词级别标记训练数据中是否存在重音,并使用其矢量量化的DCT系数模式自动检测音高重音的类型。提出了一种级联的两阶段方法,将预测重音存在和确定相应的重音类型分离出来,用于条件随机场(CRF)训练模型处理任意不受限制的文本输入。评价结果表明,新方法优于传统的单阶段方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pitch accent detection and prediction with DCT features and CRF model
Automatic detection/prediction of pitch accent, which determines the existence of prominent syllable of a word and its corresponding pitch accent pattern, is crucial in making expressive Text-To-Speech (TTS) synthesis. To train a model to detect and predict pitch accent usually requires a large amount of annotated training data to be manually labeled by phonetically trained language experts, which is both time consuming and costly. In this paper, we propose a semi-automatic algorithm to do pitch accent modeling, where the existence of accentuation in the training data is labeled at the word level by native speaker (i.e., not phonetically trained language experts) and the type of a pitch accent is automatically detected with its vector quantized DCT coefficient patterns. A cascaded, two-stage approach, which separates predicting the pitch accent existence and determining corresponding pitch accent type, is proposed to process any unrestricted text input with Conditional Random Field (CRF) trained models. The evaluation results show that the new approach outperforms the conventional, single stage approach.
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