基于正字法系统的爪哇语音节

Lucia D. Krisnawati, Aditya W. Mahastama
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引用次数: 5

摘要

在资源丰富的语言中,自动音节化被认为是一个完整的过程。然而,对于资源不足和关键语言,如爪哇语,仍然迫切需要它。音节化成为Abugida或音节脚本的音译过程、单词识别和语音合成相关的任何任务的基本支柱。由于缺乏数据集和资源,本研究采用有限状态换能器模型来构建拉丁爪哇语文档的音节词。分词规则基于爪哇文字的正字法系统。实验表明,对于维基百科中废弃的数据集,分词成音节的准确率达到95.56%,对于爪哇语杂志《Djaka Lodang》中的数据集,分词准确率达到97.92%。令人满意的准确率表明我们的音节符号能够为更复杂的应用程序提供爪哇语音节语料库,如音译、词边界预测或爪哇文字的光学字符识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Javanese Syllabifier Based on its Orthographic System
Automatic syllabification is considered as a finished process in high-resource languages. However, it is still badly needed in under-resourced and critical languages such as Javanese. Syllabification becomes the basic backbone in any task related to transliteration process for Abugida or syllabary scripts, word recognition, and speech synthesis. Due to the lack of data set and resources, this research applied a Finite State Transducer model to build a syllabifier for Javanese documents written in Latin. The segmentation rules are based on the orthograpic system of Javanese script. The experiment shows that the accuracy rate of segmented words into syllables achieves 95.56% for data set scrapped from Wiki and 97.92% for data set taken from Javanese magazine Djaka Lodang. The satisfying accuracy rates signifies that our syllabifier is capable of providing a corpus of Javanese syllables for more complex applications such as transliteration, word boundary prediction, or Optical Character Recognition for Javanese scripts.
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