From heterogeneous data to heterogeneous public: thoughts on transmedia applications for digital heritage research and dissemination
Damien Vurpillot (CESR), Perrine Pittet (CESR), Johann Forte (CESR),, Benoist Pierre (CESR)

TL;DR
This paper discusses the development of a digital platform and transmedia experiences to enhance access, integration, and dissemination of heterogeneous cultural heritage data for researchers and the public.
Contribution
It introduces the HeritageS platform and Renaissance Transmedia Lab, enabling interdisciplinary data sharing and innovative transmedia applications for cultural heritage research and outreach.
Findings
Successful integration of diverse heritage datasets
Creation of interactive transmedia experiences
Enhanced researcher-public engagement
Abstract
In recent years, we have seen a tenfold increase in volume and complexity of digital data acquired for cultural heritage documentation. Meanwhile, open data and open science have become leading trends in digital humanities. The convergence of those two parameters compels us to deliver, in an interoperable fashion, datasets that are vastly heterogeneous both in content and format and, moreover, in such a way that they fit the expectation of a broad array of researchers and an even broader public audience. Tackling those issues is one of the main goal of the "HeritageS" digital platform project supported by the "Intelligence des Patrimoines" research program. This platform is designed to allow research projects from many interdisciplinary fields to share, integrate and valorize cultural and natural heritage datasets related to the Loire Valley. In this regard, one of our main project is…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Image Retrieval and Classification Techniques · Video Analysis and Summarization
