Detecting and Predicting Archaeological Sites Using Remote Sensing and Machine Learning—Application to the Saruq Al-Hadid Site, Dubai, UAE

Author:

Ben-Romdhane Haïfa12ORCID,Francis Diana1ORCID,Cherif Charfeddine1ORCID,Pavlopoulos Kosmas2ORCID,Ghedira Hosni13,Griffiths Steven1ORCID

Affiliation:

1. Earth Sciences Department, Khalifa University, Abu Dhabi P.O. Box 127788, United Arab Emirates

2. Geography and Planning Department, Sorbonne University Abu Dhabi, Abu Dhabi P.O. Box 38044, United Arab Emirates

3. Mohamed bin Zayed University of Artificial Intelligence, Abu Dhabi 144534, United Arab Emirates

Abstract

In this paper, the feasibility of satellite remote sensing in detecting and predicting locations of buried objects in the archaeological site of Saruq Al-Hadid, United Arab Emirates (UAE) was investigated. Satellite-borne synthetic aperture radar (SAR) is proposed as the main technology for this initial investigation. In fact, SAR is the only satellite-based technology able to detect buried artefacts from space, and it is expected that fine-resolution images of ALOS/PALSAR-2 (L-band SAR) would be able to detect large features (>1 m) that might be buried in the subsurface (<2 m) under optimum conditions, i.e., dry and bare soil. SAR data were complemented with very high-resolution Worldview-3 multispectral images (0.31 m panchromatic, 1.24 m VNIR) to obtain a visual assessment of the study area and its land cover features. An integrated approach, featuring the application of advanced image processing techniques and geospatial analysis using machine learning, was adopted to characterise the site while automating the process and investigating its applicability. Results from SAR feature extraction and geospatial analyses showed detection of the areas on the site that were already under excavation and predicted new, hitherto unexplored archaeological areas. The validation of these results was performed using previous archaeological works as well as geological and geomorphological field surveys. The modelling and prediction accuracies are expected to improve with the insertion of a neural network and backpropagation algorithms based on the performed cluster groups following more recent field surveys. The validated results can provide guidance for future on-site archaeological work. The pilot process developed in this work can therefore be applied to similar arid environments for the detection of archaeological features and guidance of on-site investigations.

Funder

Khalifa University

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference77 articles.

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