2022
DOI: 10.48550/arxiv.2203.12346
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Robust Text Line Detection in Historical Documents: Learning and Evaluation Methods

Mélodie Boillet,
Christopher Kermorvant,
Thierry Paquet

Abstract: Text line segmentation is one of the key steps in historical document understanding. It is challenging due to the variety of fonts, contents, writing styles and the quality of documents that have degraded through the years.In this paper, we address the limitations that currently prevent people from building line segmentation models with a high generalization capacity. We present a study conducted using three state-of-the-art systems Doc-UFCN, dhSegment and ARU-Net and show that it is possible to build generic … Show more

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