Developing a Portable Solution for Post-Event Analysis Pipelines
- URL: http://arxiv.org/abs/2602.01798v1
- Date: Mon, 02 Feb 2026 08:29:22 GMT
- Title: Developing a Portable Solution for Post-Event Analysis Pipelines
- Authors: Leonardo Pelonero, Fabio Vitello, Eva Sciacca, Mauro Imbrosciano, Salvatore Scavo, Ugo Becciani,
- Abstract summary: We present a Science Gateway framework for the development of portable and fully automated post-event analysis pipelines.<n>We integrate Photogrammetry techniques, Data Visualization and Artificial Intelligence technologies, applied on aerial images, to assess extreme natural events and evaluate their impact on risk-exposed assets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In recent years, the monitoring and study of natural hazards have gained significant attention, particularly due to climate change, which exacerbates incidents like floods, droughts, storm surges, and landslides. Together with the constant risk of earthquakes, these climate-induced events highlight the critical necessity for enhanced risk assessment and mitigation strategies in susceptible areas such as Italy. In this work, we present a Science Gateway framework for the development of portable and fully automated post-event analysis pipelines integrating Photogrammetry techniques, Data Visualization and Artificial Intelligence technologies, applied on aerial images, to assess extreme natural events and evaluate their impact on risk-exposed assets.
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