Abstract

The optical character recognition (OCR) quality of the historical part of the Finnish newspaper and journal corpus is rather low for reliable search and scientific research on the OCRed data. The estimated character error rate (CER) of the corpus, achieved with commercial software, is between 8 and 13%. There have been earlier attempts to train high-quality OCR models with open-source software, like Ocropy (https://github.com/tmbdev/ocropy) and Tesseract (https://github.com/tesseract-ocr/tesseract), but so far, none of the methods have managed to successfully train a mixed model that recognizes all of the data in the corpus, which would be essential for an efficient re-OCRing of the corpus. The difficulty lies in the fact that the corpus is printed in the two main languages of Finland (Finnish and Swedish) and in two font families (Blackletter and Antiqua). In this paper, we explore the training of a variety of OCR models with deep neural networks (DNN). First, we find an optimal DNN for our data and, with additional training data, successfully train high-quality mixed-language models. Furthermore, we revisit the effect of confidence voting on the OCR results with different model combinations. Finally, we perform post-correction on the new OCR results and perform error analysis. The results show a significant boost in accuracy, resulting in 1.7% CER on the Finnish and 2.7% CER on the Swedish test set. The greatest accomplishment of the study is the successful training of one mixed language model for the entire corpus and finding a voting setup that further improves the results.

Highlights

  • The optical character recognition (OCR) of historical newspapers published in Finland 1771–1929 is of unsatisfactory quality

  • We demonstrate an improvement in the results using a mixed model, which seems to indicate that for OCR the language model on the word level and above is less important, whereas having sufficient representation of individual characters and their variants is crucial, with a small benefit to be gained from n-grams of characters in the immediate context

  • The character error rate is the percentage of erroneous characters in the system output and is a common metric in OCR-related tasks

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Summary

Introduction

The OCR of historical newspapers published in Finland 1771–1929 is of unsatisfactory quality. The entire corpus has been recognized with ABBYY FineReader 11 and presents a character error rate between 8 and 13%. This error rate is rather high for meaningful and reliable scientific research on this data set, so there is a need to re-OCR the entire corpus. OCRing the corpus is difficult because it contains very diverse data written in a non-standard language. (Finnish and Swedish) using two font families (Blackletter and Antiqua) with a large variety of fonts. The standardization of the Finnish literary language began in the early nineteenth century [16]; a large part of the corpus that we are working on contains spellings from different Finnish dialects

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