Estimation of ore grade is a time and cost consuming process that requires laboratory based and exploratory information. Recognition of ore grade distribution in each alteration zone will help to decrease the risk of exploration and plan for further mining activities (Brown et al., 2000; Harris and Grunsky, 2015). Previous remotely sensed alteration mapping methods were merely focused on the spatial distribution of alteration zones (Ranjbar et al., 2011; Honarmand, 2016). However, further information like ore grade distribution and whether the explored area is an economic deposit or not remain as a question. To find out the relationships between ore grade with alteration minerals, quantitative models as a combination of geological knowledge...
In order to reduce operational and field costs, remote sensing studies are used at the initial and g...
This research investigates both the value and the limitations of remote sensing as applied to minera...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...
This work seeks to implement surface indicators of porphyry copper deposits (PCDs) at known source r...
Polymetallic vein-type ores are important sources of precious metal and a principal type of orebody ...
Porphyry copper deposits form from upper crustal H₂O saturated magmatic systems, along ancient and a...
Remote sensing (RS) of alteration zones and anomalies can provide information that is useful for geo...
© 2019 by the authors. Polymetallic vein-type ores are important sources of precious metal and a pri...
Exploration geologists are urged to develop new, robust, and low-cost approaches to identify high po...
The Kalatag Ore Cluster Area, located in the Eastern Tianshan metallogenic belt of Xinjiang, stands ...
Sar Cheshmeh area is located in the Central Iranian Volcanic Belt. Mainly the Eocene volcanic rocks ...
Integrating various tools in targeting mineral deposits increases the chance of adequate detection a...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...
Important orebody characteristics that determine viability of the mineral resource and ore reserve p...
This study investigates the application of spectral image processing methods to ASTER data for mappi...
In order to reduce operational and field costs, remote sensing studies are used at the initial and g...
This research investigates both the value and the limitations of remote sensing as applied to minera...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...
This work seeks to implement surface indicators of porphyry copper deposits (PCDs) at known source r...
Polymetallic vein-type ores are important sources of precious metal and a principal type of orebody ...
Porphyry copper deposits form from upper crustal H₂O saturated magmatic systems, along ancient and a...
Remote sensing (RS) of alteration zones and anomalies can provide information that is useful for geo...
© 2019 by the authors. Polymetallic vein-type ores are important sources of precious metal and a pri...
Exploration geologists are urged to develop new, robust, and low-cost approaches to identify high po...
The Kalatag Ore Cluster Area, located in the Eastern Tianshan metallogenic belt of Xinjiang, stands ...
Sar Cheshmeh area is located in the Central Iranian Volcanic Belt. Mainly the Eocene volcanic rocks ...
Integrating various tools in targeting mineral deposits increases the chance of adequate detection a...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...
Important orebody characteristics that determine viability of the mineral resource and ore reserve p...
This study investigates the application of spectral image processing methods to ASTER data for mappi...
In order to reduce operational and field costs, remote sensing studies are used at the initial and g...
This research investigates both the value and the limitations of remote sensing as applied to minera...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...