Supervised OCR Error Detection and Correction Using Statistical and Neural Machine Translation Methods

Chantal Amrhein, S. Clematide
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引用次数: 27

Abstract

For indexing the content of digitized historical texts, optical character recognition (OCR) errors are a hampering problem. To explore the effectivity of new strategies for OCR post-correction, this article focuses on methods of character-based machine translation, specifically neural machine translation and statistical machine translation. Using the ICDAR 2017 data set on OCR post-correction for English and French, we experiment with different strategies for error detection and error correction. We analyze how OCR post-correction with NMT can profit from using additional information and show that SMT and NMT can benefit from each other for these tasks. An ensemble of our models reached best performance in ICDAR’s 2017 error correction subtask and performed competitively in error detection. However, our experimental results also suggest that tuning supervised learning for OCR post-correction of texts from different sources, text types (periodicals and monographs), time periods and languages is a difficult task: the data on which the MT systems are trained have a large influence on which methods and features work best. Conclusive and generally applicable insights are hard to achieve.
使用统计和神经机器翻译方法的监督OCR错误检测和校正
对于数字化历史文本内容的标引,光学字符识别(OCR)错误是一个阻碍问题。为了探索新的OCR后校正策略的有效性,本文重点研究了基于字符的机器翻译方法,特别是神经机器翻译和统计机器翻译。使用ICDAR 2017数据集对英语和法语进行OCR后校正,我们实验了不同的错误检测和错误校正策略。我们分析了使用NMT的OCR后校正如何从使用附加信息中获益,并表明SMT和NMT在这些任务中可以相互受益。我们的模型集合在ICDAR 2017年的纠错子任务中达到了最佳性能,并在错误检测中表现出竞争力。然而,我们的实验结果也表明,对来自不同来源、文本类型(期刊和专著)、时间段和语言的文本进行OCR校正后的监督学习进行调整是一项艰巨的任务:机器翻译系统所训练的数据对哪种方法和特征效果最好有很大影响。结论性和普遍适用的见解是很难获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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