Ground Truth用于在德国尖角字体和早期现代拉丁语的历史文献上训练OCR引擎

U. Springmann, Christian Reul, Stefanie Dipper, Johannes Baiter
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引用次数: 31

摘要

在本文中,我们描述了一个用于历史OCR的德语和拉丁语\textit{ground truth} (GT)数据集,其形式是打印文本行图像与其转录配对。该数据集名为\textit{gt4historr},由313,173行对组成,涵盖了从15世纪到19世纪以德国角字体印刷的古书的印刷日期,并在CC-BY 4.0许可下公开提供。GT作为行图像/转录对的特殊形式使其可以直接用于训练使用LSTM架构(如Tesseract 4或OCRopus)中的循环神经网络的OCR软件的最先进的识别模型。我们还为我们的数据集的子语料库提供了一些预训练的OCRopus模型,在未见过的测试用例中产生95%(早期印刷)和98%(19世纪德国角字体印刷)的字符准确率,一个Perl脚本来协调由不同转录规则产生的GT,并给出了如何为OCR目的构建GT的提示,该目的具有可能不同于语言动机转录的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ground Truth for training OCR engines on historical documents in German Fraktur and Early Modern Latin
In this paper we describe a dataset of German and Latin \textit{ground truth} (GT) for historical OCR in the form of printed text line images paired with their transcription. This dataset, called \textit{GT4HistOCR}, consists of 313,173 line pairs covering a wide period of printing dates from incunabula from the 15th century to 19th century books printed in Fraktur types and is openly available under a CC-BY 4.0 license. The special form of GT as line image/transcription pairs makes it directly usable to train state-of-the-art recognition models for OCR software employing recurring neural networks in LSTM architecture such as Tesseract 4 or OCRopus. We also provide some pretrained OCRopus models for subcorpora of our dataset yielding between 95\% (early printings) and 98\% (19th century Fraktur printings) character accuracy rates on unseen test cases, a Perl script to harmonize GT produced by different transcription rules, and give hints on how to construct GT for OCR purposes which has requirements that may differ from linguistically motivated transcriptions.
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