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Artificial intelligence and data analytics for geosciences and remote sensing

Authors :
Abdel-Mohsen O. Mohamed
Farhi Marir
Feras N. Al-Obeidat
Fares M. Howari
Neil R. Banerjee
Publication Year :
2021
Publisher :
Elsevier, 2021.

Abstract

To address the limitation of conventional statistics in dealing with hyperspectral data of satellite and airborne images, two contextual analyses are introduced in this chapter. The first case study presents the development of an artificial intelligence (AI) and data analytics algorithm capable of classifying hyperspectral data to support remote sensing and geographic information systems researchers in understanding and predicting changes in natural earth processes. The classification algorithm is based on a fuzzy approach combining a decision tree classifier with a fuzzy multiple-criteria decision analysis classifier. The second case study presents the development of an AI tool that extracts features from the hyperspectral data to transform a two-dimensional (2D) satellite and airborne picture to a pseudo-3D picture to improve complexity and produce multidirectional sun-shaded pictures and their edges. Such 3D images are useful in supporting the discovery of prospective ground for mineral exploration, extraction from the earth of precious minerals or other geological materials, usually from deposits of ore, veins, lodes, seams, reefs, or placer deposits, and overall to improve the efficiency and effectiveness of mineral exploration.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........d6e57764866c88839c2a2862f4302507
Full Text :
https://doi.org/10.1016/b978-0-12-809582-9.00021-9