Object-based classification (Tutorial)
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# Collect training objects for Object based Supervised Maximum Likelihood Classification: Select 210 random objects from Segment_all.shp using the random selection tool {{mitem|text=Vector-Research Tools-Random selection}}. Specify {{button|text=Number of Features}} = 210. Press {{button|text=OK}}. Right click on the layer Segment_all.shp and save selected objects as 210_selected.shp and load the new .shp file back in QGIS. | # Collect training objects for Object based Supervised Maximum Likelihood Classification: Select 210 random objects from Segment_all.shp using the random selection tool {{mitem|text=Vector-Research Tools-Random selection}}. Specify {{button|text=Number of Features}} = 210. Press {{button|text=OK}}. Right click on the layer Segment_all.shp and save selected objects as 210_selected.shp and load the new .shp file back in QGIS. | ||
# Specify class for each object in 210_selected.shp file according to table 1. This is the training dataset for maximum likelihood classification. Load the GoogleEarth Image from the OpenLayers plugin {{mitem|text=Plugins-OpenLayers plugin-Add Google Satellite layer}}. Install QuickMultiAttributeEdit plugin in from {{mitem|text=Plugin-Manage and Install plugin-Get more- QuickMultiAttributeEdit }}. The QuickMultiAttruibuteEdit tool simply helps in editing attributes of a vector file without opening the attribute table. Open the QuickMultiAttributeEdit from {{mitem|text=Plugins- QuickMultiAttributeEdit}}. Right click on 210_selected.shp and open attribute table. Toogle editing mode. Select one row i.e. one segment by clicking on {{mitem|text=zoom map to the selected row}}, identify the land use type by corroborating with google imagery. Press {{button|text=F12}} key to open the QuickMultiAttributeEdit and specify IDClass = corresponding Class Code in Table 1. Repeat this procedure for each segment. | # Specify class for each object in 210_selected.shp file according to table 1. This is the training dataset for maximum likelihood classification. Load the GoogleEarth Image from the OpenLayers plugin {{mitem|text=Plugins-OpenLayers plugin-Add Google Satellite layer}}. Install QuickMultiAttributeEdit plugin in from {{mitem|text=Plugin-Manage and Install plugin-Get more- QuickMultiAttributeEdit }}. The QuickMultiAttruibuteEdit tool simply helps in editing attributes of a vector file without opening the attribute table. Open the QuickMultiAttributeEdit from {{mitem|text=Plugins- QuickMultiAttributeEdit}}. Right click on 210_selected.shp and open attribute table. Toogle editing mode. Select one row i.e. one segment by clicking on {{mitem|text=zoom map to the selected row}}, identify the land use type by corroborating with google imagery. Press {{button|text=F12}} key to open the QuickMultiAttributeEdit and specify IDClass = corresponding Class Code in Table 1. Repeat this procedure for each segment. | ||
− | # Perform maximum likelihood classification of the object segments using the Semiautomatic classification plugin: To open the plugin go to {{mitem|text=Raster-Semi-Automatic Classification Plugin - Semi-Automatic Classification Plugin }}. Click {{button|text=Show docks}}. In the Semi-Automatic:ROI creation window select {{button|text=input}} as 188_pca_indices_ pan_mean.tif., {{button|text=Select a training shapefile}} as train_segments_6class.shp. Leave the ROI parameters to default. | + | # Perform maximum likelihood classification of the object segments using the Semiautomatic classification plugin: To open the plugin go to {{mitem|text=Raster-Semi-Automatic Classification Plugin - Semi-Automatic Classification Plugin }}. Click {{button|text=Show docks}}. In the Semi-Automatic:ROI creation window select {{button|text=input}} as 188_pca_indices_ pan_mean.tif., {{button|text=Select a training shapefile}} as train_segments_6class.shp. Leave the ROI parameters to default. In the Semi-Automatic: Classification window {{button|text=select classification algorithm}} to Maximum Likelihood, {{button|text=select qml}} as classification.qml, {{button|text=Check}} Create vector, Apply mask, Classification report and Calculate accuracy. Specify a cloud mask as cloud_mask.shp. {{button|text=Perform Classification}} and select an output file, semi_automatic classification.shp. An additional output file semi_automatic classification.tif will be created. See Figure '''D'''. Import the classification style from classification.qml. To do an accuracy assessment of your map output go to the {{button|text=Post processing}} tab, {{button|text=Accuracy}}, in the Semi-Automatic Classification Plugin window. Load semi_automatic classification.tif in {{button|text=Select the classification to assess}} and train_segments_6class.shp in {{button|text=Select the reference shapefile}} and click {{button|text=Calculate error matrix}}. See Figure '''E'''. |
− | In the Semi-Automatic: Classification window {{button|text=select classification algorithm}} to Maximum Likelihood, {{button|text=select qml}} as classification.qml, {{button|text=Check}} Create vector, Apply mask, Classification report and Calculate accuracy. Specify a cloud mask as cloud_mask.shp. {{button|text=Perform Classification}} and select an output file, semi_automatic classification.shp. An additional output file semi_automatic classification.tif will be created. See Figure '''D'''. | + | |
− | Import the classification style from classification.qml. To do an accuracy assessment of your map output go to the {{button|text=Post processing}} tab, {{button|text=Accuracy}}, in the Semi-Automatic Classification Plugin window. Load semi_automatic classification.tif in {{button|text=Select the classification to assess}} and train_segments_6class.shp in {{button|text=Select the reference shapefile}} and click {{button|text=Calculate error matrix}}. See Figure '''E'''. | + | |
{{red|text=Figure C: QGIS Mean shift Clustering Segmentation.}} | {{red|text=Figure C: QGIS Mean shift Clustering Segmentation.}} | ||
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{{red|text=Figure D: Supervised Maximum Likelihood Classification}} | {{red|text=Figure D: Supervised Maximum Likelihood Classification}} | ||
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{{red|text=Figure E: Supervised Maximum Likelihood Classification Accuracy}} | {{red|text=Figure E: Supervised Maximum Likelihood Classification Accuracy}} | ||
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{{red|text=Figure D: Perform an alternative supervised classification using Support Vector Machines in Monteverdi (Experimental for large datasets)}} | {{red|text=Figure D: Perform an alternative supervised classification using Support Vector Machines in Monteverdi (Experimental for large datasets)}} | ||
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# Start Monteverdi: {{mitem|text=Start-All programs-OSGeo4W-Monteverdi}} | # Start Monteverdi: {{mitem|text=Start-All programs-OSGeo4W-Monteverdi}} | ||
# Open dataset in Monteverdi: {{mitem|text=File – Open dataset }} e.g. 188_pca_indices_pan_mean.tif and train_segments_7class.shp | # Open dataset in Monteverdi: {{mitem|text=File – Open dataset }} e.g. 188_pca_indices_pan_mean.tif and train_segments_7class.shp |
Revision as of 14:31, 19 February 2014
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This section is still under construction! This article was last modified on 02/19/2014. If you have comments please use the Discussion page or contribute to the article! |
- This exercise is part of the QGIS Tutorial 2013/14
Determining segmentation parameters
- Start Monteverdi: Start-All programs-OSGeo4W-Monteverdi
- Open dataset in Monteverdi: File – Open dataset e.g. 188_pca_indices_pan.tif
- Subset data to a small area: File – Extract ROI from dataset, in the field Image to read – Reader0select file e.g. 188_pca_indices_pan.tif and press OK
- Drag the mouse in Select the ROI window to select a region equivalent to 500 x 500 pixels and Press OK to make an output image; ExtractROI1
- Perform mean shift segmentation: Filtering-Mean shift clustering, in the field image to apply shift on select output image from step 4. The Mean shift module window opens. Set the following parameters. Spatial radius = 5, Spectral values = 0,5, Min region size = 57. Check Display Boundaries, Display cluster and Run. An output named-Labeled image-is created (Figure A). Finally click Close to create all the output in Monteverdi window.
Figure A: Mean Shift Module
Object labeling and segmentation via SVM
- Object labeling: Go to Learning-Object Labelling, in the field The image to classify select file ExtractROI-OutputImage obtained in A above and in the field The segmentation of the image select file MeanShift1-Labeled Image and press OK. A window Object Labelling opens.
- Click Add to start object labeling. A new class appears in the Objects tab in the upper right corner of the window. Specify color red for New Class 0 = Urban. Double right click the image to select 10 urban objects as visually intepreted. Repeat the same procedure for New Class 1 = Cropland in yellow color and New Class 2 = Forest in green color.
- Selecting shape and pixel parameters for object clustering: In Features tab check STATS::Band1::Mean, STATS::Band2::Mean, STATS::Band3::Mean
- Selecting Support Vector Machines (SVM) parameters: Leave other parameters to default and check Parameters optimization. Click classify to obtain the output, observed in Figure B. Using the Opacity slide, you can corroborate the output with the original image. Take note of the accuracy measure in the lower right side of the window.
- Try to Check other Features in the Features tab and compare output clusters with the output of parameters specified at step 3.
NB: For more detailed information on the SVM algorithm visit the library website on: http://www.csie.ntu.edu.tw/~cjlin/libsvm/
Figure B: SVM output
Object based segmentation by mean shift clustering
- Load the raster map; 188_pca_indices_pan.tif provided in course data. Open Mean Shift Segmentation (Large scale, vector output) by searching the Orfeo toolbox.
- Select input image 188_pca_indices_pan.tif. Change Range radius = 0,5 and Min Region size = 50. Specify outfile as Segments_all.shp and RUN.
- Load Segments_all.shp. To view both the vector segments and the underlying image file, visualize the segments as hollow polygons. Right click on Segments_all.shp Properties-Styles-Fill-Simple fill-Fill style-No brush and change the border outline to colour white for better visibility Properties-Styles- Border-White. See figure C.
- Spilt the multiband image 188_pca_indices_ pan_mean.tif to single band rasters. This step is necessary to allow extraction of individual segment spectral values using the zonal statistics tool as shown in step 5: Open Split image tool from the Orfeo toolbox. Image manipulation-Split image and specify output image.
- Extract pixel spectral data for each object using the Zonal statistics Plugin: Install Zonal Statistics Plug in from Plugin-Manage and Install plugin-Get more-Zonal statistics plugin. Open the Zonal Statistics tool from Raster-Zonal statistics- Zonal statistics and specify the Raster layer, Polygon layer containing the zones and Output column for Bands 1, 2 and 3 respectively.
- Rasterize the segments to prepare for classification: Open the Rasterization tool from the Orfeo tool box Vector Data Manipulation-Rasterization. Select Input vector dataset as Segments_all.shp. Select Input reference image as 188_pca_indices_ pan_mean.tif. Input coordinates for the Output Upper-left x and Output Upper-left y. NB: The coordinates can be found by right clicking on the image file to Properties-Metadata. Change Spacing (GSD)x and Spacing (GSD)y spacing to 15 and Rasterization mode to attribute. Specify the output file and RUN.
- Collect training objects for Object based Supervised Maximum Likelihood Classification: Select 210 random objects from Segment_all.shp using the random selection tool Vector-Research Tools-Random selection. Specify Number of Features = 210. Press OK. Right click on the layer Segment_all.shp and save selected objects as 210_selected.shp and load the new .shp file back in QGIS.
- Specify class for each object in 210_selected.shp file according to table 1. This is the training dataset for maximum likelihood classification. Load the GoogleEarth Image from the OpenLayers plugin Plugins-OpenLayers plugin-Add Google Satellite layer. Install QuickMultiAttributeEdit plugin in from Plugin-Manage and Install plugin-Get more- QuickMultiAttributeEdit. The QuickMultiAttruibuteEdit tool simply helps in editing attributes of a vector file without opening the attribute table. Open the QuickMultiAttributeEdit from Plugins- QuickMultiAttributeEdit. Right click on 210_selected.shp and open attribute table. Toogle editing mode. Select one row i.e. one segment by clicking on zoom map to the selected row, identify the land use type by corroborating with google imagery. Press F12 key to open the QuickMultiAttributeEdit and specify IDClass = corresponding Class Code in Table 1. Repeat this procedure for each segment.
- Perform maximum likelihood classification of the object segments using the Semiautomatic classification plugin: To open the plugin go to Raster-Semi-Automatic Classification Plugin - Semi-Automatic Classification Plugin. Click Show docks. In the Semi-Automatic:ROI creation window select input as 188_pca_indices_ pan_mean.tif., Select a training shapefile as train_segments_6class.shp. Leave the ROI parameters to default. In the Semi-Automatic: Classification window select classification algorithm to Maximum Likelihood, select qml as classification.qml, Check Create vector, Apply mask, Classification report and Calculate accuracy. Specify a cloud mask as cloud_mask.shp. Perform Classification and select an output file, semi_automatic classification.shp. An additional output file semi_automatic classification.tif will be created. See Figure D. Import the classification style from classification.qml. To do an accuracy assessment of your map output go to the Post processing tab, Accuracy, in the Semi-Automatic Classification Plugin window. Load semi_automatic classification.tif in Select the classification to assess and train_segments_6class.shp in Select the reference shapefile and click Calculate error matrix. See Figure E.
Figure C: QGIS Mean shift Clustering Segmentation.
Figure D: Supervised Maximum Likelihood Classification
Figure E: Supervised Maximum Likelihood Classification Accuracy
Figure D: Perform an alternative supervised classification using Support Vector Machines in Monteverdi (Experimental for large datasets)
- Start Monteverdi: Start-All programs-OSGeo4W-Monteverdi
- Open dataset in Monteverdi: File – Open dataset e.g. 188_pca_indices_pan_mean.tif and train_segments_7class.shp
- Go to Learning-SVM classification (EXPERIMENTAL)
- Load 188_pca_indices_pan_mean.tif to Input image and train_segments_7class.shp to Training/validation ROIs and press OK
- Specify the Class key as ID_class and click Train. A classification output is seen Monteverdi.
- Click Validate to see classification accuracy.
Figure F: SVM classification accuracy