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Data Analysis

Explore artificial intelligence and human participation for cultural heritage preservation in emergency settings through interactive data visualisations

AISTER

The study is part of the Erasmus+ project AISTER that addresses AI-enabled Citizen Participation in University-driven Ukrainian Cultural Heritage Safeguarding

22 Cultural Heritage Preservation Projects

An international collection of 22 initiatives driving AI and citizen engagement in emergency settings

Data Analysis Study

The study collected data and conducted an international landscape analysis of AI‑enabled, participatory initiatives for safeguarding cultural heritage in emergency contexts. The study identifies several key dimensions, including levels of participation, cooperation models and types of technology, exploring patterns, correlations, and emerging directions.

Methodology workflow

A spreadsheet with 24 categorization fields was created, incorporating established typologies (e.g., citizen participation by Shirk et al.) alongside project-specific classification schemes. Project partners identified and categorized 22 related initiatives. The initial spreadsheet was processed through cleaning, transformation into machine-actionable format, pivoting, and enrichment with calculated fields. Three main quantitative data analysis approaches were applied: geographical mapping, aggregations, and cross-category filtering to derive insights. Data visualization worksheets were developed in Tableau and published with interactive elements, including tooltips and legends.

Access Report, Methodology and Dataset

Access below the report, the methodology and dataset with the collection of projects that demonstrably intersect AI, cultural heritage, and active public participation, including data visualisations and bibliography. Please cite as:

Zourou, K., Ziku, M. (2025). AI and human participation for cultural heritage preservation in emergency settings. AISTER consortium.

AISTER report ziku zourou
Report
AISTER methodology
Methodology
AISTER inventory
Dataset

Visualisations at a glance

Click on thumbnail or scroll to see in detail

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Spatio-temporal view
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Faceted view
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Project-level view
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Cross-data view

Spatio-temporal Representations: Geographic Distribution of Actions

Overview of initiatives and key dimensions

Faceted Data View

Insights across key dimensions

Project-Level View

Insights across key dimensions related to artificial intelligence

Combined View

Cross-Category Analysis in Key Dimensions

Data Overview

Project links and short descriptions of the 22 cultural heritage preservation projects

Task Team

Κατερίνα Ζούρου

Director | Web2Learn

Team Lead

Mariana Ziku

Researcher | Web2Learn

Methodology, Data Analysis​ & Visualisations

Στεφανία Οικονόμου

Researcher | Web2Learn

Reviewer