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QGIS 2 Cookbook

You're reading from   QGIS 2 Cookbook Become a QGIS power user and master QGIS data management, visualization, and spatial analysis techniques

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Product type Paperback
Published in Apr 2016
Publisher
ISBN-13 9781783984961
Length 390 pages
Edition 1st Edition
Tools
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Authors (3):
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Anita Graser Anita Graser
Author Profile Icon Anita Graser
Anita Graser
Víctor Olaya Ferrero Víctor Olaya Ferrero
Author Profile Icon Víctor Olaya Ferrero
Víctor Olaya Ferrero
Alex Mandel Alex Mandel
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Alex Mandel
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Toc

Table of Contents (14) Chapters Close

Preface 1. Data Input and Output FREE CHAPTER 2. Data Management 3. Common Data Preprocessing Steps 4. Data Exploration 5. Classic Vector Analysis 6. Network Analysis 7. Raster Analysis I 8. Raster Analysis II 9. QGIS and the Web 10. Cartography Tips 11. Extending QGIS 12. Up and Coming Index

Performing supervised classification of raster layers


In the previous recipes, we saw how to change the values of a raster layer and create classes. When you have several layers, classifying might not be that easy, and defining the patterns to perform this classification might not be obvious. A different technique to be used in this case is to define zones that share a common characteristic and let the corresponding algorithm extract the statistical values that define them so that this can later be applied to perform the classification itself. This is known as Supervised classification, and this recipe explains how to do this in QGIS.

Getting ready

Open the classification.qgs project. It contains an RGB image and a vector layer with polygons.

How to do it…

  1. The image has to be separated into individual bands. Run Split RGB bands using the provided image as the input, and you will obtain three layers named R, G, and B.

  2. Open the Supervised classification algorithm from the Processing Toolbox menu...

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