(Mis)Matching Metadata: Improving Accessibility in Digital Visual Archives through the EyCon Project

Author:

Aske Katherine1ORCID,Giardinetti Marina2ORCID

Affiliation:

1. Northumbria University and Loughborough University

2. Université Paris Cité and Université Paris Nanterre

Abstract

Discussing the current AHRC/LABEX-funded EyCon (Early Conflict Photography 1890–1918 and Visual AI) project, this article considers potentially problematic metadata and how it affects the accessibility of digital visual archives. The authors deliberate how metadata creation and enrichment could be improved through Artificial Intelligence (AI) tools and explore the practical applications of AI-reliant tools to analyze a large corpus of photographs and create or enrich metadata. The amount of visual data created by digitization efforts is not always followed by the creation of contextual metadata, which is a major problem for archival institutions and their users, as metadata directly affects the accessibility of digitized records. Moreover, the scale of digitization efforts means it is often beyond the scope of archivists and other record managers to individually assess problematic or sensitive images and their metadata. Additionally, existing metadata for photographic and visual records are presenting issues in terms of outdated descriptions or inconsistent contextual information. As more attention is given to the creation of accessible digital content within archival institutions, we argue that too little is being given to the enrichment of record data. In this article, the authors ask how new tools can address incomplete or inaccurate metadata and improve the transparency and accessibility of digital visual records.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Information Systems,Conservation

Reference101 articles.

1. Big Data, Bad Metadata: A Methodological Note on the Importance of Good Metadata in the Age of Digital History

2. Towards a National Collection: https://www.ukri.org/what-we-offer/browse-our-areas-of-investment-and-support/towards-a-national-collection-opening-uk-heritage-to-the-world/; Living with Machines: https://livingwithmachines.ac.uk; ADDI: https://www.photometadata.org/About; CAMPI: https://github.com/cmu-lib/campi; and Frick Collection Photoarchive: https://www.frick.org/library/photoarchive (all accessed February 25 2023).

3. See, for example, Eero Hyvönen. 2022. Publishing and Using Cultural Heritage Linked Data on the Semantic Web (Ebook). Springer Nature Switzerland [Reprint of original edition by Morgan & Claypool, 2012]; Ed Jones and Michele Seikel. 2016. Linked Data for Cultural Heritage. American Library Association; and Koraljka Golub and Ying-Hsang Lui (Eds.). 2021. Information and Knowledge Organisation in Digital Humanities, Global Perspectives. Abingdon: Routledge.

4. EyCon Project. https://eycon.hypotheses.org/.

5. French Institutions: Gallica Archives Nationales Service Historique de la Défense La Contemporaine Musée du Quai Branly Archives Nationales d'Outre-Mer Établissement de communication et de production audiovisuelle de la Défense.

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