保加利亚历史文献的后OCR 文本更正

Angel Beshirov, Milena Dobreva, Dimitar Dimitrov, Momchil Hardalov, Ivan Koychev, Preslav Nakov
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引用次数: 0

摘要

历史文献的数字化对于保护社会文化遗产至关重要。这一过程中的一个重要步骤是使用光学字符识别技术(OCR)将扫描图像转换为文本,从而实现进一步的搜索和信息提取等。遗憾的是,这是一个棘手的问题,因为标准的 OCR 工具并不适合处理历史正字法和具有挑战性的布局。因此,在处理此类文档时,通常需要对 OCR 输出应用额外的文本校正步骤。在这项工作中,我们将重点放在保加利亚语上,并创建了首个基准数据集,用于评估以首个标准化保加利亚语正字法(19 世纪的 Drinov 正字法)书写的保加利亚历史文档的 OCR 文本校正。我们进一步开发了一种方法,通过利用大量当代文献保加利亚文本,自动生成该正字法以及随后的伊万切夫正字法的合成数据。然后,我们使用最先进的 LLMs 和编码器-解码器框架,并通过对角注意力损失和复制与覆盖机制来改进后OCR 文本校正。在 ICDAR 2019 保加利亚数据集上,我们提出的方法减少了识别过程中引入的错误,并将文档质量提高了 25%,与最先进的方法相比提高了 16%。我们在 \url{https://github.com/angelbeshirov/post-ocr-text-correction}.} 发布了我们的数据和代码。
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Post-OCR Text Correction for Bulgarian Historical Documents
The digitization of historical documents is crucial for preserving the cultural heritage of the society. An important step in this process is converting scanned images to text using Optical Character Recognition (OCR), which can enable further search, information extraction, etc. Unfortunately, this is a hard problem as standard OCR tools are not tailored to deal with historical orthography as well as with challenging layouts. Thus, it is standard to apply an additional text correction step on the OCR output when dealing with such documents. In this work, we focus on Bulgarian, and we create the first benchmark dataset for evaluating the OCR text correction for historical Bulgarian documents written in the first standardized Bulgarian orthography: the Drinov orthography from the 19th century. We further develop a method for automatically generating synthetic data in this orthography, as well as in the subsequent Ivanchev orthography, by leveraging vast amounts of contemporary literature Bulgarian texts. We then use state-of-the-art LLMs and encoder-decoder framework which we augment with diagonal attention loss and copy and coverage mechanisms to improve the post-OCR text correction. The proposed method reduces the errors introduced during recognition and improves the quality of the documents by 25\%, which is an increase of 16\% compared to the state-of-the-art on the ICDAR 2019 Bulgarian dataset. We release our data and code at \url{https://github.com/angelbeshirov/post-ocr-text-correction}.}
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