Unsupervised classification (Tutorial)

From AWF-Wiki
(Difference between revisions)
Jump to: navigation, search
 
(9 intermediate revisions by 2 users not shown)
Line 1: Line 1:
:''In this article, you will learn how to classify a landscape raster via k-means clustering''
+
==Unsupervised K-Means classification==
 +
* In the search engine of the Processing Toolbox, type {{typed|text=kmeans}} and double click '''KMeansClassification''' of OTB.
 +
* Specify a multispectral image as Input Image.
 +
* Specify directory and name for the Output image. Select the output data type {{button|text=uint 8}} from the pull-down list.
 +
* Set the {{button|text=Number of classes}} to {{typed|text=20}}
 +
* Check the {{button|text=Training set size}} to {{typed|text=10000}}
 +
* Output pixel type: {{typed|text=uint8}}
 +
* Click on {{button|text=Run}}.
 +
[[File:qgis_otb_kmeans.png|400px]]
  
{| class='wikitable floatright'
+
* Load the resulting image into QGIS. It is single band file with 20 grey levels labeled from 0 to 19.
|+Table A
+
* {{mitem|text=Layer Properties --> Symbology --> Render type}}. Switch to {{button|text=Singleband pseudocolor}} and select a '''Color ramp''' (e.g. Spectral). Select the '''Mode''' {{button|text=Equal interval}} and set the number of classes to {{typed|text=20}}
|-
+
!Code
+
!Name
+
!Cluster number
+
!RGB color
+
|-
+
|1
+
|Urban area
+
|10,9,15
+
|230-000-077
+
|-
+
|2
+
|Cropland
+
|16,0,13,3,7,17,18
+
|255-255-168
+
|-
+
|3
+
|Pastures/grassland
+
|12,8
+
|230-230-077
+
|-
+
|4
+
|Broadleaved forest
+
|6,2,5,4
+
|128-255-000
+
|-
+
|5
+
|Coniferous forest
+
|11,19
+
|000-166-000
+
|-
+
|6
+
|Water bodies
+
|14
+
|128-242-230
+
|-
+
|7
+
|Cloud
+
|1
+
|255-255-255
+
|}
+
# Classifying an image
+
## Add the raster layer ''188_pca_indices.tif'' into a [[QGIS]] project. It should be available in the [[Course data|course data]] (see [[Exercise 06: Digitizing training and test areas|previous exercise]]).
+
## Open the k-means classification algorithm provided by the Orfeo toolbox. It can be found in the processing toolbar under {{mitem|text=Toolbox --> Orfeo Toolbox --> Learning --> Unsupervised KMeans image classification}} (see figure '''A''').
+
##* Set the ''188_pca_indices'' layer as {{button|text=Input image}}.
+
##* Set the {{button|text=Number of classes}} to 20 and the {{button|text=Number of iterations}} to 1000.
+
##* The {{button|text=Convergence threshold}} should be set at 0.0001.
+
##* Leave all other configurations as they are and click {{button|text=Run}}. The resulting image has 20 classes, labeled from 0 to 19.
+
# Image symbology
+
## Right-click the classified layer in the [[TOC]] and select {{mitem|text=Properties --> Style}} (see figure '''B''').
+
## Set the {{button|text=Render type}} to {{button|text=Singleband pseudocolor}}.
+
## Set {{button|text=Color interpolation}} to {{button|text=Discrete}}.
+
## In the {{button|text=Load min/max}} section, select the {{button|text=Min/max}} radio button and click {{button|text=Load}} to update the range for classification.
+
## Set the {{button|text=Mode}} to {{button|text=Equal interval}} with 20 classes and confirm with {{button|text=Classify}}.
+
## Confirm with {{button|text=Apply}} or click {{button|text=OK}} if you are content with your settings.
+
# Create a land use/cover classification scheme table as in table '''A'''.
+
## As a reference, you may add a google layer to the project:<br/> {{mitem|text=Web --> ObenLayers plugin --> Add Google Satellite layer}}.
+
## Set the coordinate reference system
+
## Open {{mitem|text=Project --> Project properties}}.
+
## Set {{button|text=WGS 84 Pseudo Mercator}} ({{button|text=EPSG 3857}}) as coordinate system
+
## Check the {{button|text=Enable on the fly transformation}} box
+
## Right click {{button|text=188_pca_indices}} in the [[TOC]] and select {{button|text=Set Project CRS from layer}}.
+
## Order the maps in the [[TOC]] so that the classified layer lies above the Google Maps layer.
+
## Now, zoom in to some section of the classified layer where the classes can easily be distinguished.
+
## Activate and de-activate the layer in the [[TOC]] and compare to the Google layer in order to get an idea of the classes.
+
## While doing so, create a table displaying which classes in the classified layer may represent the classes in table '''A'''. You can write it down on a sheet of paper or save it as a text file on your computer. 
+
# Change the grid values
+
## Select {{mitem|text=Saga --> Grid-Tools --> Change grid values}} from the {{button|text=Processing}} toolbox.
+
##* As {{button|text=Grid}}, select the output map from the previous step.
+
##* From the {{button|text=Replace condition}} pulldown menu, select {{button|text=[2] Low value <= grid value < high value}}.
+
##* Now, open the lookup menu table ({{button|text=...}}) and enter the values you have written down in the previous step.
+
##* Set path and name of the output file and launch the algorithm with {{button|text=Run}}.
+
# Assign discrete colors to the land cover layer (figure '''C''').
+
## Right click the layer in the [[TOC]] or double click to open the layer {{button|text=Properties}}.
+
## Select the {{button|text=Style}} tab and set the following options:
+
##* For {{button|text=Render type}} select {{button|text=Singleband pseudocolor}}
+
##* For {{button|text=Color interpolation}}, select {{button|text=Discrete}}
+
##* Set {{button|text=Mode}} to {{button|text=Equal interval}} and {{button|text=Classes}} to 7.
+
##* Set {{button|text=Load min/max values}} to {{button|text=Min/max}}.
+
##* For better interpretation, you can edit the {{button|text=Label}} column in the classes section according to the class names in table '''A'''.
+
##* Don't forget to click {{button|text=Classify}} for adding the classes.
+
## Click {{button|text=Load}} and confirm with {{button|text=Apply}} or {{button|text=OK}}.
+
 
+
==Figures==
+
{| class="wikitable" style="border:0pt"
+
|style="border:0pt"|[[Image:RemSens_Exercise07_01.png|thumb|450px|'''Figure A:''' Dialogue of the ''Unsupervised K-Means image classification'' plugin from the Orfeo toolbox in [[QGIS]].]]
+
|style="border:0pt"|[[Image:RemSens_Exercise07_02.png|thumb|450px|'''Figure B:''' Land cover map produced by the k-means clustering algorithm.]]
+
|-
+
|style="border:0pt"|[[Image:RemSens_Exercise07_03.png|thumb|450px|'''Figure C:''' Land cover map produced by the k-means clustering algorithm in discrete colors.]]
+
|}
+
 
+
[[Category:Image classification]]
+

Latest revision as of 14:37, 24 November 2020

[edit] Unsupervised K-Means classification

  • In the search engine of the Processing Toolbox, type kmeans and double click KMeansClassification of OTB.
  • Specify a multispectral image as Input Image.
  • Specify directory and name for the Output image. Select the output data type uint 8 from the pull-down list.
  • Set the Number of classes to 20
  • Check the Training set size to 10000
  • Output pixel type: uint8
  • Click on Run.

Qgis otb kmeans.png

  • Load the resulting image into QGIS. It is single band file with 20 grey levels labeled from 0 to 19.
  • Layer Properties --> Symbology --> Render type. Switch to Singleband pseudocolor and select a Color ramp (e.g. Spectral). Select the Mode Equal interval and set the number of classes to 20
Personal tools
Namespaces

Variants
Actions
Navigation
Development
Toolbox
Print/export