Granite Exposure Mapping Through Sentinel‐2 Visible and Short Wave Infrared Bands

Author:

Jan Nazir1,Minallah Nasru1,Gohar Neelam2ORCID,Jan Naveed3ORCID,Khan Shahid4ORCID,Khan Salahuddin5,Alibakhshikenari Mohammad6ORCID

Affiliation:

1. Department of Computer Systems Engineering Faculty of Electrical and Computer Engineering University of Engineering and Technology Peshawar Peshawar Pakistan

2. Department of Computer Science Shaheed Benazir Bhutto Women University Peshawar Pakistan

3. Department of Electronics Engineering Technology University of Technology Nowshera Nowshera Pakistan

4. Department of Computer Science COMSATS University Islamabad‐Abbottabad Campus Abbottabad Pakistan

5. College of Engineering King Saud University Riyadh Saudi Arabia

6. Department of Signal Theory and Communications Universidad Carlos III de Madrid Leganés Spain

Abstract

AbstractNonmetallic minerals like granite and limestone have calcite and biotitic ingredients as their major part which exhibit wonderful absorption features in the visible and short wave range of the electromagnetic spectrum. This research puts emphasis on delineating granite and limestone deposits of the Mardan district through the latest multispectral Landsat‐9 and Sentinel‐2 sensors of which the latter provided 94% mapping accuracy in delineating granites (biotitic bearing minerals) and limestone (calcite‐bearing minerals). The Image processing techniques of minimum noise fraction, which is double cascaded principal components analysis and pixel purity index algorithms proved helpful to bring significant improvements in classification results and in the reduction of noise and data size. The outcomes of the research study show that supervised machine learning algorithms are impactful to map such minerals provided that the data must be well organized and limited in size. The results achieved were verified through validation steps like, (a) Independent reference data of high‐resolution Google Earth maps and (b) Ground survey reports. Arc GIS 10.2 and Envi 5.3 software suite were used to create (a) ground truth points at random for accuracy assessment (b) portraying study area maps (c) Image Processing and Preprocessing tools and (d) implementation of machine learning algorithms. Access to the data and software suite is being provided for open research work.

Publisher

American Geophysical Union (AGU)

Subject

Electrical and Electronic Engineering,General Earth and Planetary Sciences,Condensed Matter Physics

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