This task performs a Mahalanobis Distance supervised classification. Mahalanobis Distance is a direction-sensitive distance classifier that uses statistics for each class. It is similar to Maximum Likelihood classification, but it assumes all class covariances are equal and therefore is a faster method. All pixels are classified to the closest training data.
Example
e = ENVI()
File = Filepath('qb_boulder_msi', Subdir=['data'], $
Root_Dir=e.Root_Dir)
Raster = e.OpenRaster(File)
File2 = Filepath('qb_boulder_msi_vectors.shp', Subdir=['data'], $
Root_Dir=e.Root_Dir)
Vector = e.OpenVector(File2)
StatTask = ENVITask('TrainingClassificationStatistics')
StatTask.INPUT_RASTER = Raster
StatTask.INPUT_VECTOR = Vector
StatTask.Execute
Task = ENVITask('MahalanobisDistanceClassification')
Task.INPUT_RASTER = Raster
Task.COVARIANCE = StatTask.Covariance
Task.MEAN = StatTask.Mean
Task.CLASS_PIXEL_COUNT = StatTask.Class_Pixel_Count
Task.Execute
DataColl = e.Data
DataColl.Add, Task.OUTPUT_RASTER
View = e.GetView()
Layer = View.CreateLayer(Task.OUTPUT_RASTER)
Syntax
Result = ENVITask('MahalanobisDistanceClassification')
Input properties (Set, Get): CLASS_COLORS, CLASS_NAMES, CLASS_PIXEL_COUNT, COVARIANCE, INPUT_RASTER, MEAN, OUTPUT_RASTER_URI, OUTPUT_RULE_RASTER_URI, THRESHOLD_MAX_DISTANCE
Output properties (Get only): OUTPUT_RASTER, OUTPUT_RULE_RASTER
Properties marked as "Set" are those that you can set to specific values. You can also retrieve their current values any time. Properties marked as "Get" are those whose values you can retrieve but not set.
Methods
This task inherits the following methods from ENVITask:
AddParameter
Execute
Parameter
ParameterNames
RemoveParameter
Properties
This task inherits the following properties from ENVITask:
COMMUTE_ON_DOWNSAMPLE
COMMUTE_ON_SUBSET
DESCRIPTION
DISPLAY_NAME
NAME
REVISION
TAGS
This task also contains the following properties:
CLASS_COLORS (optional)
This is an array of RGB triplets representing the class colors as defined by the input vector.
CLASS_NAMES (optional)
This is a string array of class names as defined by the input vector.
CLASS_PIXEL_COUNT (required)
Specify an array that is the number of pixels per class: [number of classes].
COVARIANCE (required)
Specify an array that is [number of bands, number of bands, number of classes].
INPUT_RASTER (required)
Specify a raster on which to perform supervised classification.
MEAN (required)
Specify an array that is [number of bands, number of classes].
OUTPUT_RASTER
This is a reference to the output raster of filetype ENVI.
OUTPUT_RASTER_URI (optional)
Specify a string with the fully qualified filename and path to export the associated OUTPUT_RASTER.
- If you set this property to an asterisk symbol (*), the output raster will be virtual and not written to disk.
- If you do not specify this property, the associated output raster will not be created. To force the creation of a temporary file, set this parameter to an exclamation symbol (!).
OUTPUT_RULE_RASTER
This is a reference to the output rule image of filetype ENVI.
OUTPUT_RULE_RASTER_URI (optional)
Specify a string with the fully qualified filename and path of the associated OUTPUT_RASTER. If you do not specify this property, the associated OUTPUT_RASTER will not be created. To force the creation of a temporary file set the property to an exclamation symbol (!).
THRESHOLD_MAX_DISTANCE (optional)
Specify a pixel value between 0 and 10000000 that applies to all classes, or specify an array of pixel values, one for each class. The number of array elements must equal the number of classes. Mahalanobis Distance accounts for possible non-spherical probability distributions. This value represents the distance within which a class must fall from the center or mean of the distribution for a class. The smaller the distance threshold, the more pixels that are unclassified.
Version History
API Version
4.3
See Also
ENVITask, MinimumDistanceClassification Task, MaximumLikelihoodClassification Task