First-order texture
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− | Local statistical moments (Mean, Variance | + | Local statistical moments (Mean, Variance, Skewness, Kurtosis) calculated on every pixel in the selected channel of the input image, over a specified neighborhood are called ''first-order'' textures. |
* In the search engine of the Processing Toolbox, type '''Local Statistic''' and select '''Local Statistic Extraction''' under Feature Extraction of the Orfeo Toolbox. | * In the search engine of the Processing Toolbox, type '''Local Statistic''' and select '''Local Statistic Extraction''' under Feature Extraction of the Orfeo Toolbox. | ||
* Under the Parameters tab, select a single band or a multiband file as input layer. | * Under the Parameters tab, select a single band or a multiband file as input layer. |
Revision as of 14:32, 29 January 2018
Local statistical moments (Mean, Variance, Skewness, Kurtosis) calculated on every pixel in the selected channel of the input image, over a specified neighborhood are called first-order textures.
- In the search engine of the Processing Toolbox, type Local Statistic and select Local Statistic Extraction under Feature Extraction of the Orfeo Toolbox.
- Under the Parameters tab, select a single band or a multiband file as input layer.
- In case of a multiband file select the band number.
- Select an integer number as Neighborhood size in pixels.
The output image (Fig. B) is a multiband with 4 statistical moments per band in the exact order:
- Mean
- Variance
- Skewness
- Kurtosis
The standard deviation of gray levels in a region in the neighborhood of a pixel can be calculated by a GRASS GIS modul:
- In the search engine of the Processing Toolbox, type neighbors and select r.neighbors under Raster of GRASS GIS 7 commands.
- Under the Parameters tab, select a single band file as input layer.
- Select stddev from the drop-down list Neighborhood operation.
- Select an odd integer number as Neighborhood size in pixels.
- Tick Use circular neighborhood.