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Transformer-based HTR for Historical Documents

2022-03-21Code Available1· sign in to hype

Phillip Benjamin Ströbel, Simon Clematide, Martin Volk, Tobias Hodel

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Abstract

We apply the TrOCR framework to real-world, historical manuscripts and show that TrOCR per se is a strong model, ideal for transfer learning. TrOCR has been trained on English only, but it can adapt to other languages that use the Latin alphabet fairly easily and with little training material. We compare TrOCR against a SOTA HTR framework (Transkribus) and show that it can beat such systems. This finding is essential since Transkribus performs best when it has access to baseline information, which is not needed at all to fine-tune TrOCR.

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