As a source of data continuity between Landsat and SPOT, Sentinel-2 is an Earth observation mission developed by the European Space Agency (ESA), which acquires 13 bands in the visible and near-infrared (VNIR) to shortwave infrared (SWIR) range. In this study, a Sentinel-2A imager was utilized to assess its ability to perform lithological classification in the Shibanjing ophiolite complex in Inner Mongolia, China. Five conventional machine learning methods, including artificial neural network (ANN), k-nearest neighbor (k-NN), maximum likelihood classification (MLC), random forest classifier (RFC), and support vector machine (SVM), were compared in order to find an optimal classifier for lithological mapping. The experiment revealed that the...
Lithological mapping using satellite images, particularly the Advanced Spaceborne Thermal Emission a...
Sentinel-2A MSI is the Landsat-like spatial resolution (10–60 m) super-spectral instrument of the Eu...
Goal-oriented classifications can be done with the integration of remote sensing images and spectral...
ASTER data and ETM+ data are used for lithological mapping in an arid area in the northwest Xinjiang...
Geological mapping in desert, mountainous or densely vegetated areas are sometimes faced with many c...
The East Tianshan Mountain is one of the most important gold ore forming zones in northwestern China...
In the last fifty years, satellite images have been used to map the Earth’s surface at a variety of ...
In recent decades, lithological mapping techniques using hyperspectral remotely sensed imagery have ...
The mineral ore potential of many mountainous regions of the world, like the Kurdistan region of Ira...
We present an optimal integration of multi-sensor datasets, including Advanced Spaceborne Thermal an...
In this study, we proposed an automated lithological mapping approach by using spectral enhancement ...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
The WorldView-3 (WV-3) satellite is a new sensor with high spectral resolution, which equips eight m...
Lithologic mapping using Advanced Spaceborne Thermal Emission and Reflectance Radiometer (ASTER) dat...
The Beishan area has more than seventy mafic-ultramafic complexes sparsely distributed in the area a...
Lithological mapping using satellite images, particularly the Advanced Spaceborne Thermal Emission a...
Sentinel-2A MSI is the Landsat-like spatial resolution (10–60 m) super-spectral instrument of the Eu...
Goal-oriented classifications can be done with the integration of remote sensing images and spectral...
ASTER data and ETM+ data are used for lithological mapping in an arid area in the northwest Xinjiang...
Geological mapping in desert, mountainous or densely vegetated areas are sometimes faced with many c...
The East Tianshan Mountain is one of the most important gold ore forming zones in northwestern China...
In the last fifty years, satellite images have been used to map the Earth’s surface at a variety of ...
In recent decades, lithological mapping techniques using hyperspectral remotely sensed imagery have ...
The mineral ore potential of many mountainous regions of the world, like the Kurdistan region of Ira...
We present an optimal integration of multi-sensor datasets, including Advanced Spaceborne Thermal an...
In this study, we proposed an automated lithological mapping approach by using spectral enhancement ...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
The WorldView-3 (WV-3) satellite is a new sensor with high spectral resolution, which equips eight m...
Lithologic mapping using Advanced Spaceborne Thermal Emission and Reflectance Radiometer (ASTER) dat...
The Beishan area has more than seventy mafic-ultramafic complexes sparsely distributed in the area a...
Lithological mapping using satellite images, particularly the Advanced Spaceborne Thermal Emission a...
Sentinel-2A MSI is the Landsat-like spatial resolution (10–60 m) super-spectral instrument of the Eu...
Goal-oriented classifications can be done with the integration of remote sensing images and spectral...