中世纪手写体文献识别的语言模型集成

Markus Wüthrich, M. Liwicki, Andreas Fischer, Emanuel Indermühle, H. Bunke, Gabriel Viehhauser, Michael Stolz
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引用次数: 36

摘要

建立历史文献识别系统是一项艰巨的任务。尤其是中世纪的文字。其复杂性主要受可用数据质量差和数量少的影响。本文将基于HMM的识别系统应用于中古高地德语书写的13世纪中世纪手稿。最初为现代文字开发的识别系统已经适应了中世纪的文字。除了数据处理之外,主要的挑战之一是创建合适的语言模型。由于中世纪语言缺乏合适的独立文本语料库,语言模型只能建立在相当少的手稿基础上。由于语料库的规模较小,优化语言模型参数会很快导致过拟合问题。在本文中,我们描述了一种策略,将所有可用的信息集成到语言模型中,并优化语言模型参数,而不会遇到这个问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Language Model Integration for the Recognition of Handwritten Medieval Documents
Building recognition systems for historical documents is a difficult task. Especially, when it comes to medieval scripts. The complexity is mainly affected by the poor quality and the small quantity of the data available. In this paper we apply an HMM based recognition system to medieval manuscripts from the 13th century written in Middle High German. The recognition system, which was originally developed for modern scripts, has been adapted to medieval scripts. Beside the data processing, one of the major challenges is to create a suitable language model. Because of the lack of appropriate independent text corpora for medieval languages, the language model has to be created on the base of a rather small number of manuscripts only. Due to the small size of the corpus, optimizing the language model parameters can quickly lead to the problem of overfitting. In this paper we describe a strategy to integrate all available information into the language model and to optimize the language model parameters without suffering from this problem.
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