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Survey of Post-OCR Processing Approaches

244 Citations2021
Thi Tuyet Haï Nguyen, Adam Jatowt, Mickaël Coustaty

The importance of enhancing quality of OCR results by studying their effects on information retrieval and natural language processing applications is clarified by defining the post-OCR processing problem, illustrating its typical pipeline, and reviewing the state-of-the-art post- OCR processing approaches.

Abstract

Optical character recognition (OCR) is one of the most popular techniques used for converting printed documents into machine-readable ones. While OCR engines can do well with modern text, their performance is unfortunately significantly reduced on historical materials. Additionally, many texts have already been processed by various out-of-date digitisation techniques. As a consequence, digitised texts are noisy and need to be post-corrected. This article clarifies the importance of enhancing quality of OCR results by studying their effects on information retrieval and natural language processing applications. We then define the post-OCR processing problem, illustrate its typical pipeline, and review the state-of-the-art post-OCR processing approaches. Evaluation metrics, accessible datasets, language resources, and useful toolkits are also reported. Furthermore, the work identifies the current trend and outlines some research directions of this field.