Deep learning algorithms have found numerous applications in the field of geological mapping to assist in mineral exploration and benefit from capabilities such as high-dimensional feature learning and processing through multi-layer networks. However, there are two challenges associated with identifying geological features using deep learning methods. On the one hand, a single type of data resource cannot diagnose the characteristics of all geological units; on the other hand, deep learning models are commonly designed to output a certain class for the whole input rather than segmenting it into several parts, which is necessary for geological mapping tasks. To address such concerns, a framework that comprises a multi-source data fusion tech...
With the ever-growing availability of massive geo-data, deep learning has been widely applied to geo...
In the modern era of diminishing returns on fixed exploration budgets, challenging targets, and ever...
In recent years, with the development of geological prospecting from shallow ore to deep and hidden ...
Mapping of surficial geology is an important requirement for broadening the geoscience database of n...
Geoscientists have extensively used machine learning for geological mapping and exploring the minera...
Taking the Chang’e-4 and Chang’e-5 landing areas as the study areas, this study extracts the geologi...
AbstractThe lithology of underground formations can be determined using logging data, which is impor...
Lithological mapping is a critical aspect of geological mapping that can be useful in studying the m...
It is meaningful to study the geological structures exposed on the Earth’s surface, which is p...
In the geological survey, the recognition and classification of rock lithology are an important cont...
As deep learning (DL) gains popularity for its ability to make accurate predictions in various field...
Rock lithology recognition plays a fundamental role in geological survey research, mineral resource ...
Random Forests, a supervised machine learning algorithm, provides a robust, data driven means of pre...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
Hyperspectral imaging has been applied in remote sensing amongst other disciplines, success in these...
With the ever-growing availability of massive geo-data, deep learning has been widely applied to geo...
In the modern era of diminishing returns on fixed exploration budgets, challenging targets, and ever...
In recent years, with the development of geological prospecting from shallow ore to deep and hidden ...
Mapping of surficial geology is an important requirement for broadening the geoscience database of n...
Geoscientists have extensively used machine learning for geological mapping and exploring the minera...
Taking the Chang’e-4 and Chang’e-5 landing areas as the study areas, this study extracts the geologi...
AbstractThe lithology of underground formations can be determined using logging data, which is impor...
Lithological mapping is a critical aspect of geological mapping that can be useful in studying the m...
It is meaningful to study the geological structures exposed on the Earth’s surface, which is p...
In the geological survey, the recognition and classification of rock lithology are an important cont...
As deep learning (DL) gains popularity for its ability to make accurate predictions in various field...
Rock lithology recognition plays a fundamental role in geological survey research, mineral resource ...
Random Forests, a supervised machine learning algorithm, provides a robust, data driven means of pre...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
Hyperspectral imaging has been applied in remote sensing amongst other disciplines, success in these...
With the ever-growing availability of massive geo-data, deep learning has been widely applied to geo...
In the modern era of diminishing returns on fixed exploration budgets, challenging targets, and ever...
In recent years, with the development of geological prospecting from shallow ore to deep and hidden ...