Salvato in:
Dettagli Bibliografici
Autori principali: Kong, Lingxiao, Sarris, Apostolos, Polidorou, Miltiadis, Klingenberg, Victor, Sevetlidis, Vasilis, Arampatzakis, Vasilis, Pavlidis, George, Yang, Cong, Boukhers, Zeyd
Natura: Preprint
Pubblicazione: 2025
Soggetti:
Accesso online:https://arxiv.org/abs/2509.06044
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866918137280069632
author Kong, Lingxiao
Sarris, Apostolos
Polidorou, Miltiadis
Klingenberg, Victor
Sevetlidis, Vasilis
Arampatzakis, Vasilis
Pavlidis, George
Yang, Cong
Boukhers, Zeyd
author_facet Kong, Lingxiao
Sarris, Apostolos
Polidorou, Miltiadis
Klingenberg, Victor
Sevetlidis, Vasilis
Arampatzakis, Vasilis
Pavlidis, George
Yang, Cong
Boukhers, Zeyd
contents Cultural heritage preservation faces significant challenges in managing diverse, multi-source, and multi-scale data for effective monitoring and conservation. This paper documents a comprehensive data historicity and migration framework implemented within the ARGUS project, which addresses the complexities of processing heterogeneous cultural heritage data. We describe a systematic data processing pipeline encompassing standardization, enrichment, integration, visualization, ingestion, and publication strategies. The framework transforms raw, disparate datasets into standardized formats compliant with FAIR principles. It enhances sparse datasets through established imputation techniques, ensures interoperability through database integration, and improves querying capabilities through LLM-powered natural language processing. This approach has been applied across five European pilot sites with varying preservation challenges, demonstrating its adaptability to diverse cultural heritage contexts. The implementation results show improved data accessibility, enhanced analytical capabilities, and more effective decision-making for conservation efforts.
format Preprint
id arxiv_https___arxiv_org_abs_2509_06044
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Unified Framework for Cultural Heritage Data Historicity and Migration: The ARGUS Approach
Kong, Lingxiao
Sarris, Apostolos
Polidorou, Miltiadis
Klingenberg, Victor
Sevetlidis, Vasilis
Arampatzakis, Vasilis
Pavlidis, George
Yang, Cong
Boukhers, Zeyd
Databases
Cultural heritage preservation faces significant challenges in managing diverse, multi-source, and multi-scale data for effective monitoring and conservation. This paper documents a comprehensive data historicity and migration framework implemented within the ARGUS project, which addresses the complexities of processing heterogeneous cultural heritage data. We describe a systematic data processing pipeline encompassing standardization, enrichment, integration, visualization, ingestion, and publication strategies. The framework transforms raw, disparate datasets into standardized formats compliant with FAIR principles. It enhances sparse datasets through established imputation techniques, ensures interoperability through database integration, and improves querying capabilities through LLM-powered natural language processing. This approach has been applied across five European pilot sites with varying preservation challenges, demonstrating its adaptability to diverse cultural heritage contexts. The implementation results show improved data accessibility, enhanced analytical capabilities, and more effective decision-making for conservation efforts.
title A Unified Framework for Cultural Heritage Data Historicity and Migration: The ARGUS Approach
topic Databases
url https://arxiv.org/abs/2509.06044