Training images for geostastical simulation in Julia.
This package converts famous training images from the geostatistcs literature to a standard format for quick experimentation in Julia. It is part of the GeoStats.jl framework and can be used in conjunction with multiple-point simulation solvers.
The author does not hold any copyright on the data. Please give credit to the sources in the table.
TI = geostatsimage(identifier)
where identifier
can be any of the strings listed with the command GeoStatsImages.available()
Identifier | Preview | Type | Data source |
---|---|---|---|
WalkerLake | ![]() |
Continuous | Mariethoz & Caers, 2014 |
WalkerLakeTruth | ![]() |
Continuous | Mariethoz & Caers, 2014 |
StoneWall | ![]() |
Continuous | Mariethoz & Caers 2014 |
Herten | ![]() |
Continuous | Mariethoz & Caers 2014 |
Lena | ![]() |
Continuous | Mariethoz & Caers 2014 |
StanfordV | ![]() |
Continuous | Mao & Journel 2014 |
Gaussian30x10 | ![]() |
Continuous | Hoffimann 2020 |
Strebelle | ![]() |
Categorical | Strebelle 2002 |
Ellipsoids | ![]() |
Categorical | Mariethoz & Caers 2014 |
WestCoastAfrica | ![]() |
Categorical | Mariethoz & Caers 2014 |
Flumy | ![]() |
Categorical | Hoffimann et al 2017 |
Fluvsim | ![]() |
Categorical | Mariethoz & Caers, 2014 |
Ketton | ![]() |
Categorical | Imperial College Pore-Scale Modelling Group |
Contributions are very welcome, as are feature requests and suggestions.
If you have any questions, please contact our community.