We present an optimal integration of multi-sensor datasets, including Advanced Spaceborne Thermal and Reflection Radiometer (ASTER), Phased Array type L-band Synthetic Aperture Radar (PALSAR), Sentinel-1, and digital elevation model for lithological classification using Machine Learning Models (MLMs). Different input features such as spectral, spectral and transformed spectral, spectral and morphological, spectral and textural, and optimum hybrid features were derived and evaluated to accurately classify different rock types found in the Chhatarpur district (Madhya Pradesh), India using the Support Vector Machine (SVM) and Random Forest (RF). The SVM achieves better classification accuracy and shows less sensitivity to the number of samples...
Goal-oriented classifications can be done with the integration of remote sensing images and spectral...
In the last fifty years, satellite images have been used to map the Earth’s surface at a variety of ...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
In this study, we proposed an automated lithological mapping approach by using spectral enhancement ...
The mineral ore potential of many mountainous regions of the world, like the Kurdistan region of Ira...
As a source of data continuity between Landsat and SPOT, Sentinel-2 is an Earth observation mission ...
Manually inspecting and analyzing satellite images can lead to numerous errors and is quite time con...
The mafic and ultramafic rocks of Mettupalayam belong to the southern granulite terrain of India, wh...
AbstractMachine learning algorithms (MLAs) are a powerful group of data-driven inference tools that ...
Geochemical data can reflect geological features, making it one of the basic types of geodata that h...
This paper represents a novel application of machine learning techniques for MARS rock detection usi...
In an area of interest- Sivas Basin, Turkey- where most of the units are sedimentary and show simila...
Lithofacies classification is a process to identify rock lithology by indirect measurements. Usually...
Lithologic mapping using Advanced Spaceborne Thermal Emission and Reflectance Radiometer (ASTER) dat...
Goal-oriented classifications can be done with the integration of remote sensing images and spectral...
In the last fifty years, satellite images have been used to map the Earth’s surface at a variety of ...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
In this study, we proposed an automated lithological mapping approach by using spectral enhancement ...
The mineral ore potential of many mountainous regions of the world, like the Kurdistan region of Ira...
As a source of data continuity between Landsat and SPOT, Sentinel-2 is an Earth observation mission ...
Manually inspecting and analyzing satellite images can lead to numerous errors and is quite time con...
The mafic and ultramafic rocks of Mettupalayam belong to the southern granulite terrain of India, wh...
AbstractMachine learning algorithms (MLAs) are a powerful group of data-driven inference tools that ...
Geochemical data can reflect geological features, making it one of the basic types of geodata that h...
This paper represents a novel application of machine learning techniques for MARS rock detection usi...
In an area of interest- Sivas Basin, Turkey- where most of the units are sedimentary and show simila...
Lithofacies classification is a process to identify rock lithology by indirect measurements. Usually...
Lithologic mapping using Advanced Spaceborne Thermal Emission and Reflectance Radiometer (ASTER) dat...
Goal-oriented classifications can be done with the integration of remote sensing images and spectral...
In the last fifty years, satellite images have been used to map the Earth’s surface at a variety of ...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...