Author:
Muehlberger Guenter,Seaward Louise,Terras Melissa,Ares Oliveira Sofia,Bosch Vicente,Bryan Maximilian,Colutto Sebastian,Déjean Hervé,Diem Markus,Fiel Stefan,Gatos Basilis,Greinoecker Albert,Grüning Tobias,Hackl Guenter,Haukkovaara Vili,Heyer Gerhard,Hirvonen Lauri,Hodel Tobias,Jokinen Matti,Kahle Philip,Kallio Mario,Kaplan Frederic,Kleber Florian,Labahn Roger,Lang Eva Maria,Laube Sören,Leifert Gundram,Louloudis Georgios,McNicholl Rory,Meunier Jean-Luc,Michael Johannes,Mühlbauer Elena,Philipp Nathanael,Pratikakis Ioannis,Puigcerver Pérez Joan,Putz Hannelore,Retsinas George,Romero Verónica,Sablatnig Robert,Sánchez Joan Andreu,Schofield Philip,Sfikas Giorgos,Sieber Christian,Stamatopoulos Nikolaos,Strauß Tobias,Terbul Tamara,Toselli Alejandro Héctor,Ulreich Berthold,Villegas Mauricio,Vidal Enrique,Walcher Johanna,Weidemann Max,Wurster Herbert,Zagoris Konstantinos
Abstract
Purpose
An overview of the current use of handwritten text recognition (HTR) on archival manuscript material, as provided by the EU H2020 funded Transkribus platform. It explains HTR, demonstrates Transkribus, gives examples of use cases, highlights the affect HTR may have on scholarship, and evidences this turning point of the advanced use of digitised heritage content. The paper aims to discuss these issues.
Design/methodology/approach
This paper adopts a case study approach, using the development and delivery of the one openly available HTR platform for manuscript material.
Findings
Transkribus has demonstrated that HTR is now a useable technology that can be employed in conjunction with mass digitisation to generate accurate transcripts of archival material. Use cases are demonstrated, and a cooperative model is suggested as a way to ensure sustainability and scaling of the platform. However, funding and resourcing issues are identified.
Research limitations/implications
The paper presents results from projects: further user studies could be undertaken involving interviews, surveys, etc.
Practical implications
Only HTR provided via Transkribus is covered: however, this is the only publicly available platform for HTR on individual collections of historical documents at time of writing and it represents the current state-of-the-art in this field.
Social implications
The increased access to information contained within historical texts has the potential to be transformational for both institutions and individuals.
Originality/value
This is the first published overview of how HTR is used by a wide archival studies community, reporting and showcasing current application of handwriting technology in the cultural heritage sector.
Subject
Library and Information Sciences,Information Systems
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