ARise: an Augmented Reality Mobile Application to Improve Cultural Heritage Resilience
- URL: http://arxiv.org/abs/2511.11610v1
- Date: Mon, 03 Nov 2025 15:13:15 GMT
- Title: ARise: an Augmented Reality Mobile Application to Improve Cultural Heritage Resilience
- Authors: Angelica Urbanelli, Marina Nadalin, Mario Chiesa, Rojin Bayat, Massimo Migliorini, Claudio Rossi,
- Abstract summary: The preservation of cultural heritage faces increasing threats from climate change effects and environmental hazards.<n>This paper presents ARise, an Augmented Reality mobile application designed to enhance public engagement with cultural sites while raising awareness about the local impacts of climate change.<n>Although formal user testing is forthcoming, this prototype demonstrates the potential of AR to support education, cultural sustainability, and climate adaptation.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The preservation of cultural heritage faces increasing threats from climate change effects and environmental hazards, demanding innovative solutions that can promote awareness and resilience. This paper presents ARise, an Augmented Reality mobile application designed to enhance public engagement with cultural sites while raising awareness about the local impacts of climate change. Based on a user-centered co-creative methodology involving stakeholders from five European regions, ARise integrates multiple data sourcess - a Crowdsourcing Chatbot, a Social Media Data Analysis tool, and an AI-based Artwork Generation module - to deliver immersive and emotionally engaging experiences. Although formal user testing is forthcoming, this prototype demonstrates the potential of AR to support education, cultural sustainability, and climate adaptation.
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