International audienceUnlike some other well-known challenges such as facial recognition, where machine learning and inversion algorithms are widely developed, the geosciences suffer from a lack of large, labelled data sets that can be used to validate or train robust machine learning and inversion schemes. Publicly available 3D geological models are far too restricted in both number and the range of geological scenarios to serve these purposes. With reference to inverting geophysical data this problem is further exacerbated as in most cases real geophysical observations result from unknown 3D geology, and synthetic test data sets are often not particularly geological or geologically diverse. To overcome these limitations, we have used the ...
Three-dimensional geophysical inversion modeling of gravity data has been performed to test the vali...
Thanks to the brilliant progress in machine learning, many research works have conducted data-driven...
For Round 5 of the Queensland Collaborative Exploration Initiative (CEI), Caldera Analytics was enga...
This dataset contains 3 million magnetic field images of three-dimensional geological models genera...
Applied geophysicists aim to improve knowledge of 3D geological volume geometries and rock propertie...
Gravity prospecting is an important geophysical method for mineral resource exploration and investig...
To be reliable, Earth models used for mineral exploration should be consistent with all available ge...
Mira Geoscience completed an integrated interpretation in the Jaguar Greenstone Belt (JGB), in Weste...
TGIF Seminar given at the Department of Earth Sciences of the University of Hawaii at Manoa on Octob...
A new method for building a model of the rock property distribution on an unconformity surface (Prat...
The skill in \u201creading\u201d two-dimension representations (typically geological maps) as symbol...
Gravity data inversion is a fundamental tool for geological exploration. A large amount of algorithm...
International audienceThe present article proposes a method to significantly improve the constructio...
International audienceExisting 3D geological systems are well adapted to high data-density environme...
For highly structured subsurface, the use of strong prior information in geophysical inversion produ...
Three-dimensional geophysical inversion modeling of gravity data has been performed to test the vali...
Thanks to the brilliant progress in machine learning, many research works have conducted data-driven...
For Round 5 of the Queensland Collaborative Exploration Initiative (CEI), Caldera Analytics was enga...
This dataset contains 3 million magnetic field images of three-dimensional geological models genera...
Applied geophysicists aim to improve knowledge of 3D geological volume geometries and rock propertie...
Gravity prospecting is an important geophysical method for mineral resource exploration and investig...
To be reliable, Earth models used for mineral exploration should be consistent with all available ge...
Mira Geoscience completed an integrated interpretation in the Jaguar Greenstone Belt (JGB), in Weste...
TGIF Seminar given at the Department of Earth Sciences of the University of Hawaii at Manoa on Octob...
A new method for building a model of the rock property distribution on an unconformity surface (Prat...
The skill in \u201creading\u201d two-dimension representations (typically geological maps) as symbol...
Gravity data inversion is a fundamental tool for geological exploration. A large amount of algorithm...
International audienceThe present article proposes a method to significantly improve the constructio...
International audienceExisting 3D geological systems are well adapted to high data-density environme...
For highly structured subsurface, the use of strong prior information in geophysical inversion produ...
Three-dimensional geophysical inversion modeling of gravity data has been performed to test the vali...
Thanks to the brilliant progress in machine learning, many research works have conducted data-driven...
For Round 5 of the Queensland Collaborative Exploration Initiative (CEI), Caldera Analytics was enga...