Note: This document is for an older version of GRASS GIS that has been discontinued. You should upgrade, and read the current manual page.
The v.class.mlpy module is a tool for supervised vector classification. It is built on top of the Python mlpy library [Albanese2012]. The classification is based on attribute values. The geometry is not taken into account, so the module does not depend on the feature types used in the map. The classification is supervised, so the training dataset is always required.
The attribute table of training map (dataset) has to contain a column with the class. Required type of class column is integer. Expected type of other columns is double or integer.
This module requires the user to have mlpy library installed. However, this is not an issue because mlpy library is free and open source and can be quickly downloaded and installed. Furthermore, library is available for all major platforms supported by GRASS GIS. You find mlpy download and installation instructions at the official mlpy website (https://mlpy.sourceforge.net/).
This is an example in a North Carolina sample dataset. It uses several raster maps and generates (spatially) random vector data for classification from raster maps. The random data used as input to the classification and represent training dataset and dataset to be classified in the real use case.
Two sets of random points are generated containing 100 and 1000 points. Then, an attribute table is created for both maps and attributes are derived from digital values of raster maps (Landsat images) at points locations. These attribute table columns are input to the classification. The smaller dataset is used as training dataset. Classes are taken from the raster map which is a part of the sample dataset as an example result of some former classification. The number of classes in training dataset is 6.
# the example code uses unix-like syntax for continuation lines, for-loops, # variables and assigning command outputs to variables # generate random points to be used as an input v.random output=points_unknown n=1000 v.db.addtable map=points_unknown # generate random points to be used as a training dataset v.random output=points_known n=100 v.db.addtable map=points_known # fill attribute tables MAPS=$(g.list type=rast pattern="lsat*" exclude="*87*" mapset=PERMANENT sep=" ") let NUM=0 for MAP in $MAPS do let NUM++ v.db.addcolumn map=points_unknown layer=1 columns="map_$NUM integer" v.db.addcolumn map=points_known layer=1 columns="map_$NUM integer" v.what.rast map=points_unknown layer=1 raster=$MAP column=map_$NUM v.what.rast map=points_known layer=1 raster=$MAP column=map_$NUM done # fill the class (category) column with correct values for training dataset v.db.addcolumn map=points_known layer=1 columns="landclass integer" v.what.rast map=points_known layer=1 raster=landclass96 column=landclass # TODO: syntax in the setting of color tables is strange, fix example # set color table r.colors.out map=landclass96 rules=tmp_color_rules_file \ | v.colors map=points_known column=landclass layer=1 rules=tmp_color_rules_file rm tmp_color_rules_file # do the classification v.class.mlpy input=points_unknown training=points_known class_column=landclass # set color table r.colors.out map=landclass96 rules=tmp_color_rules_file \ | v.colors map=points_unknown column=landclass layer=1 rules=tmp_color_rules_file rm tmp_color_rules_file
Available at: v.class.mlpy source code (history)
Latest change: Monday Nov 11 18:04:48 2024 in commit: 59e289fdb093de6dd98d5827973e41128196887d
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