Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data

Unmanned aerial vehicles (UAVs) or drones have made great progress in aerial surveys to research and discover heritage sites and archaeological areas, particularly after having developed their technical capabilities to carry various sensors onboard, whether they are conventional cameras, multispectr...

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Main Authors: Abdalrahman Qubaa, Saja Al-Hamdani
Format: Article
Language:English
Published: Warsaw University of Life Sciences 2021-04-01
Series:Przegląd Naukowy Inżynieria i Kształtowanie Środowiska
Subjects:
Online Access: http://iks.pn.sggw.pl/PN91/A16/art16.pdf
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spelling doaj-0892f20c4ee642089ebbe87ddaa5c5602021-03-21T19:03:24ZengWarsaw University of Life SciencesPrzegląd Naukowy Inżynieria i Kształtowanie Środowiska1732-93532543-74962021-04-0130118219410.22630/PNIKS.2021.30.1.16Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones dataAbdalrahman Qubaa0Saja Al-Hamdani1 University of Mosul, Remote Sensing Center University of Mosul, College of Computer & Mathematic Sciencese Unmanned aerial vehicles (UAVs) or drones have made great progress in aerial surveys to research and discover heritage sites and archaeological areas, particularly after having developed their technical capabilities to carry various sensors onboard, whether they are conventional cameras, multispectral cameras, and thermal sensors. The objective of this research is to use the drone technology and k-mean clustering algorithm for the first time in Nineveh Governorate in Iraq to reveal the extent of civil excesses and random construction, as well as the looting and theft that occur in the archaeological areas. DJI Phantom 4 Pro drone was used, in addition to using the specialized Pix4D program to process drone images and make mosaics for them. Multiple flights were performed using a drone to survey multiple locations throughout the area and compare them with satellite images during different years. Drone’s data classification was implemented using a k-means clustering algorithm. The results of the data classification for three different time periods indicated that the percentage of archaeological lands decreased from 90.31% in 2004 to 25.29% in 2018. Where the work revealed the extent of the archaeological area’s great violations. The study also emphasized the importance of directing authorities of local antiquities to ensure the use of drone’s technology to obtain statistical and methodological reports periodically to assess archaeological damage and to avoid overtaking, stolen and looted of these sites. http://iks.pn.sggw.pl/PN91/A16/art16.pdf unmanned aerial vehiclesk-mean clusteringunsupervised classificationpix4dremote sensingarchaeological survey
collection DOAJ
language English
format Article
sources DOAJ
author Abdalrahman Qubaa
Saja Al-Hamdani
spellingShingle Abdalrahman Qubaa
Saja Al-Hamdani
Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data
Przegląd Naukowy Inżynieria i Kształtowanie Środowiska
unmanned aerial vehicles
k-mean clustering
unsupervised classification
pix4d
remote sensing
archaeological survey
author_facet Abdalrahman Qubaa
Saja Al-Hamdani
author_sort Abdalrahman Qubaa
title Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data
title_short Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data
title_full Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data
title_fullStr Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data
title_full_unstemmed Detecting abuses in archaeological areas using k-mean clustering analysis and UAVs/drones data
title_sort detecting abuses in archaeological areas using k-mean clustering analysis and uavs/drones data
publisher Warsaw University of Life Sciences
series Przegląd Naukowy Inżynieria i Kształtowanie Środowiska
issn 1732-9353
2543-7496
publishDate 2021-04-01
description Unmanned aerial vehicles (UAVs) or drones have made great progress in aerial surveys to research and discover heritage sites and archaeological areas, particularly after having developed their technical capabilities to carry various sensors onboard, whether they are conventional cameras, multispectral cameras, and thermal sensors. The objective of this research is to use the drone technology and k-mean clustering algorithm for the first time in Nineveh Governorate in Iraq to reveal the extent of civil excesses and random construction, as well as the looting and theft that occur in the archaeological areas. DJI Phantom 4 Pro drone was used, in addition to using the specialized Pix4D program to process drone images and make mosaics for them. Multiple flights were performed using a drone to survey multiple locations throughout the area and compare them with satellite images during different years. Drone’s data classification was implemented using a k-means clustering algorithm. The results of the data classification for three different time periods indicated that the percentage of archaeological lands decreased from 90.31% in 2004 to 25.29% in 2018. Where the work revealed the extent of the archaeological area’s great violations. The study also emphasized the importance of directing authorities of local antiquities to ensure the use of drone’s technology to obtain statistical and methodological reports periodically to assess archaeological damage and to avoid overtaking, stolen and looted of these sites.
topic unmanned aerial vehicles
k-mean clustering
unsupervised classification
pix4d
remote sensing
archaeological survey
url http://iks.pn.sggw.pl/PN91/A16/art16.pdf
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AT sajaalhamdani detectingabusesinarchaeologicalareasusingkmeanclusteringanalysisanduavsdronesdata
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