多层转录模型——概念概述

Q3 Arts and Humanities
D. Śledziński
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引用次数: 0

摘要

本文讨论了多层转录模型(以下简称MLTM)的假设。所提出的解决方案是一种先进的字形到音素(G2P)转换方法,该方法可以在技术应用中实现,例如自动语音识别和合成系统。MLTM的特点也促进了文本到转写转换在语言学研究中的应用。本文提出的模型是对单词的正字法表示进行多步骤处理的基础,这些正字法表示是逐步转录的。该程序的连续阶段包括多字符音位的识别、发音状态的改变和辅音簇的简化。本文中描述的多层模型可以将单个语音过程(例如同化)以及其他类型的转换分配给特定的层。因此,这套规则变得更加透明。此外,与任何过程相关的规则都可以独立于与其他形式的转换相关的规则进行修改,前提是后者已被分配到不同的层。所讨论的多层转录模型的这些特性为基于它的解决方案提供了关键的优势,例如它们的灵活性和透明度。模型中没有关于层的适用数量、它们的功能或每个层中定义的规则数量的假设。用于实现MLTM概念的特殊机制能够将单个字符投影到音位或语音转录本上(在基于MLTM的系统的最后一层中的处理完成后获得)。本文中提出的解决方案已在波兰语中实现,但在其他语言中使用相同的模型并非不可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Layer Transcription Model – concept outline
This paper discusses the assumptions of a Multi-Layer Transcription Model (hereinafter: MLTM). The solution presented is an advanced grapheme-to-phoneme (G2P) conversion method that can be implemented in technical applications, such as automatic speech recognition and synthesis systems. The features of MLTM also facilitate the application of text-to-transcription conversion in linguistic research. The model presented here is the basis for multi-step processing of the orthographic representation of words with those being transcribed gradually. The consecutive stages of the procedure include, among other things, identification of multi-character phonemes, voicing status change, and consonant clusters simplification. The multi-layer model described in this paper makes it possible to assign individual phonetic processes (for example assimilation), as well as other types of transformation, to particular layers. As a result, the set of rules becomes more transparent. Moreover, the rules related to any process can be modified independently of the rules connected with other forms of transformation, provided that the latter have been assigned to a different layer. These properties of the multi-layer transcription model in question provide crucial advantages for the solutions based on it, such as their flexibility and transparency. There are no assumptions in the model about the applicable number of layers, their functions, or the number of rules defined in each layer. A special mechanism used for the implementation of the MLTM concept enables projection of individual characters onto either a phonemic or a phonetic transcript (obtained after processing in the final layer of the MLTM-based system has been completed). The solution presented in this text has been implemented for the Polish language, however, it is not impossible to use the same model for other languages.
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来源期刊
Lingua Posnaniensis
Lingua Posnaniensis Arts and Humanities-Language and Linguistics
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32 weeks
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