Neural OCR Post-Hoc Correction of Historical Corpora
Author(s) -
Lijun Lyu,
Maria Koutraki,
Martin Krickl,
Besnik Fetahu
Publication year - 2021
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00379
Subject(s) - computer science , typeface , optical character recognition , artificial intelligence , natural language processing , word error rate , transcription (linguistics) , speech recognition , word (group theory) , convolutional neural network , language model , standardization , recurrent neural network , character (mathematics) , font , artificial neural network , linguistics , image (mathematics) , philosophy , geometry , mathematics , operating system
Optical character recognition (OCR) is crucial for a deeper access to historical collections. OCR needs to account for orthographic variations, typefaces, or language evolution (i.e., new letters, word spellings), as the main source of character, word, or word segmentation transcription errors. For digital corpora of historical prints, the errors are further exacerbated due to low scan quality and lack of language standardization. For the task of OCR post-hoc correction, we propose a neural approach based on a combination of recurrent (RNN) and deep convolutional network (ConvNet) to correct OCR transcription errors. At character level we flexibly capture errors, and decode the corrected output based on a novel attention mechanism. Accounting for the input and output similarity, we propose a new loss function that rewards the model’s correcting behavior. Evaluation on a historical book corpus in German language shows that our models are robust in capturing diverse OCR transcription errors and reduce the word error rate of 32.3% by more than 89%.
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