Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction

Archaeological heritage in the Near East is under an ever increasing threat from multiple vectors such as looting and systematic destruction, militarization, and uncontrolled urban expansion in the absence of governmental control among others. Physically monitoring endangered sites proves to be infe...

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Main Author: Hassan El Hajj
Format: Article
Language:English
Published: Ubiquity Press 2021-03-01
Series:Journal of Computer Applications in Archaeology
Subjects:
Online Access:https://journal.caa-international.org/articles/70
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spelling doaj-fa5cd2a55be14672a22b1549f69e5faa2021-04-27T07:16:31ZengUbiquity PressJournal of Computer Applications in Archaeology2514-83622021-03-014110.5334/jcaa.7048Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and DestructionHassan El Hajj0Classical Archaeology Department, Philipps-Universität Marburg, Biegenstrasse 10, 35037 MarburgArchaeological heritage in the Near East is under an ever increasing threat from multiple vectors such as looting and systematic destruction, militarization, and uncontrolled urban expansion in the absence of governmental control among others. Physically monitoring endangered sites proves to be infeasible due to the dangerous ground conditions on the one hand, and the vast area of land on which they are dispersed. In recent years, the abundant availability of Very High Resolution (VHR) imaging satellites with short revisit times meant that it was possible to monitor a large portion of these sites from space. However, such images are relatively expensive and beyond the means of many researchers and concerned local authorities. In this paper, I present an approach that uses open source data from two of the European Space Agency’s (ESA) Copernicus Constellation, Sentinel-1 and Sentinel-2 in order to generate disturbance patches, from which looting and destruction areas are classified using Machine Learning. Such an approach opens the door towards sustainable monitoring over large swaths of land over long periods of time.https://journal.caa-international.org/articles/70coherence mapsnear eastarchaeological lootingarchaeological destructioncultural heritageopen source
collection DOAJ
language English
format Article
sources DOAJ
author Hassan El Hajj
spellingShingle Hassan El Hajj
Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction
Journal of Computer Applications in Archaeology
coherence maps
near east
archaeological looting
archaeological destruction
cultural heritage
open source
author_facet Hassan El Hajj
author_sort Hassan El Hajj
title Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction
title_short Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction
title_full Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction
title_fullStr Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction
title_full_unstemmed Interferometric SAR and Machine Learning: Using Open Source Data to Detect Archaeological Looting and Destruction
title_sort interferometric sar and machine learning: using open source data to detect archaeological looting and destruction
publisher Ubiquity Press
series Journal of Computer Applications in Archaeology
issn 2514-8362
publishDate 2021-03-01
description Archaeological heritage in the Near East is under an ever increasing threat from multiple vectors such as looting and systematic destruction, militarization, and uncontrolled urban expansion in the absence of governmental control among others. Physically monitoring endangered sites proves to be infeasible due to the dangerous ground conditions on the one hand, and the vast area of land on which they are dispersed. In recent years, the abundant availability of Very High Resolution (VHR) imaging satellites with short revisit times meant that it was possible to monitor a large portion of these sites from space. However, such images are relatively expensive and beyond the means of many researchers and concerned local authorities. In this paper, I present an approach that uses open source data from two of the European Space Agency’s (ESA) Copernicus Constellation, Sentinel-1 and Sentinel-2 in order to generate disturbance patches, from which looting and destruction areas are classified using Machine Learning. Such an approach opens the door towards sustainable monitoring over large swaths of land over long periods of time.
topic coherence maps
near east
archaeological looting
archaeological destruction
cultural heritage
open source
url https://journal.caa-international.org/articles/70
work_keys_str_mv AT hassanelhajj interferometricsarandmachinelearningusingopensourcedatatodetectarchaeologicallootinganddestruction
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