University of Leicester
Browse

A Novel Machine Learning Automated Change Detection Tool for Monitoring Disturbances and Threats to Archaeological Sites

Download (16.69 MB)
journal contribution
posted on 2024-12-03, 16:07 authored by Ahmed Mutasim Abdalla Mahmoud, Nichole SheldrickNichole Sheldrick, Muftah Ahmed

Archaeological sites across the globe are facing significant threats and heritage managers are under increasing pressure to monitor and preserve these sites. Since 2015, the EAMENA project has documented more than 200,000 archaeological sites and the disturbances and threats affecting them across the Middle East and North Africa (MENA) region, using a combination of remote sensing, digitization, and fieldwork methodologies. The large number of sites and their often remote or otherwise difficult to access locations makes consistent and regular monitoring of these sites for disturbances and threats a daunting task. Combined with the increasing frequency and severity of threats to archaeological sites, the need to develop novel tools and methods that can rapidly monitor the changes at and around archaeological sites and provide accurate and consistent monitoring has never been more urgent. In this paper, we introduce the EAMENA Machine Learning Automated Change Detection tool (EAMENA MLACD). This newly-developed online tool uses bespoke machine learning algorithms to process sequential satellite images and create land classification maps to detect and identify disturbances and threats in the vicinity of known archaeological sites for the purposes of heritage monitoring and preservation. Initial testing and validation of results from the EAMENA MLACD in a case study in Bani Walid, Libya, demonstrate how it can be used to identify disturbances and potential threats to heritage sites, and increase the speed and efficiency of monitoring activities undertaken by heritage professionals.

Funding

The EAMENA project is funded by Arcadia (https://arcadiafund.org.uk) (2312-5142). The work presented here has also been generously supported by a grant from the British Council and DCMS funded Cultural Protection Fund (LG1-0097-22). At the University of Leicester, the EAMENA project also sits within and is supported by the Centre for Endangered Archaeology and Heritage. The fieldwork survey in Bani Walid was funded through the Cultural Protection Fund, and was carried out by a team of heritage professionals from the Libyan Department of Antiquities.

History

Author affiliation

College of Social Sci Arts and Humanities Archaeology & Ancient History

Version

  • VoR (Version of Record)

Published in

Remote Sensing Applications: Society and Environment

Volume

37

Pagination

101396 - 101396

Publisher

Elsevier

issn

2352-9385

eissn

2352-9385

Copyright date

2024

Available date

2024-12-03

Language

en

Deposited by

Dr Nichole Sheldrick

Deposit date

2024-11-26

Data Access Statement

The EAMENA MLACD code can be accessed from the EAMENA GitHub repository (https://github.com/eamena-project/EAMENA-MachineLearning-ACD).

Usage metrics

    University of Leicester Publications

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC