Performs a supervised random forest classification using training site polygons/points and predictor rasters.
wbt_random_forest_classification(
inputs,
training,
field,
output = NULL,
split_criterion = "Gini",
n_trees = 500,
min_samples_leaf = 1,
min_samples_split = 2,
test_proportion = 0.2,
wd = NULL,
verbose_mode = FALSE,
compress_rasters = FALSE,
command_only = FALSE
)
Returns the tool text outputs.
Names of the input predictor rasters.
Name of the input training site polygons/points shapefile.
Name of the attribute containing class data.
Name of the output raster file.
Split criterion to use when building a tree. Options include 'Gini', 'Entropy', and 'ClassificationError'.
The number of trees in the forest.
The minimum number of samples required to be at a leaf node.
The minimum number of samples required to split an internal node.
The proportion of the dataset to include in the test split; default is 0.2.
Changes the working directory.
Sets verbose mode. If verbose mode is FALSE
, tools will not print output messages.
Sets the flag used by 'WhiteboxTools' to determine whether to use compression for output rasters.
Return command that would be executed by system()
rather than running tool.