Training data selection (SCP)
(→Defining of land cover classes) |
(→Defining land cover classes) |
||
Line 8: | Line 8: | ||
[[File:qgis_goe_luc_classes.png|400px]] | [[File:qgis_goe_luc_classes.png|400px]] | ||
The specification other metaclasses is not as detailed. If we are more interested in forest and open area classes we need to adapt and modify this scheme. | The specification other metaclasses is not as detailed. If we are more interested in forest and open area classes we need to adapt and modify this scheme. | ||
− | + | In addition we need to consider pheneolgical developments of vegetation at specific acquisiton dates and to specify more classes which can possibly be identified in the multispectral feature space of the satellite image. | |
[[category:QGIS Tutorial]] | [[category:QGIS Tutorial]] |
Revision as of 10:50, 19 April 2018
Defining land cover classes
Before starting to map land cover classes using Sentinel-2 satellite images we need clear definitions and a classification scheme. An example of a hierarchical land use and land cover (LUC) classification scheme is the European Urban Atlas. The scheme defines 5 main meta-classes where the class 1. Artificial surfaces has many sub classes as shown in the following figure.
On the lowest level not all classes defined in the European Urban Atlas do also appear in the surroundings of Göttingen: The specification other metaclasses is not as detailed. If we are more interested in forest and open area classes we need to adapt and modify this scheme. In addition we need to consider pheneolgical developments of vegetation at specific acquisiton dates and to specify more classes which can possibly be identified in the multispectral feature space of the satellite image.