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Statistically trained orthographic to sound models for Thai

机译:统计上训练的正交到泰国的声音模型

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Many languages have a non-obvious, but not unrelated, relationshi between orthography and pronunciation. Traditional methods for automatic conversion from letters to phones involve hand-crafted letter-to-sound rules, but these require care and expertise to develop. This paper presents a letter-to-sound rule system for Thai, that is trained automatically from lexicons. A statistical model, decision trees, is used to predict phonese from letters. Letters mapping to multi-phones are used to solve the problem of implicit vowels and final consonants propagation and pre- and post-processing techniques are used to handle the inversion of initial consonants and vowels. For tone prediction, hand-crafted rules are used instead since there is no ambiguation if the phonological composition is known. combining the n-gram of phone model with the decision trees, we can achieve 68.76
机译:许多语言都有一个非明显,但不是不相关的,之间的关系,之间的关系和发音。传统方法从信件到手机的自动转换涉及手工制作的信件到声音规则,但这些规则需要关心和专业知识。本文介绍了泰式的字母到声音规则系统,从词典中自动培训。统计模型,决策树,用于预测来自字母的电话。映射到多手机的字母用于解决隐式元音的问题,最终辅音传播和预处理技术用于处理初始辅音和元音的反转。对于色调预测,使用手工制作的规则,因为如果知道语音组合物,则没有歧义。将n-gr克电话模型与决策树相结合,我们可以实现68.76

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