This task creates pixel regions of interest (ROIs) from a class activation raster generated by a deep learning model. 
            This task is part of ENVI Deep Learning, which requires a separate license and installation.
            The ROIs created with this tool  can be combined with the original ROIs to create new label rasters to either train a new model again or to refine a trained model. Pixel ROIs do not contain georeferencing information. They can only be used as input to creating label rasters that are perfectly coregistered with their associated input rasters. If you want to create ROIs that can reproject to a georeferenced raster, use the ClassActivationToPolygonROI task instead.
            Example
            The file TrainedModelContainers.h5 is included with the ENVI Deep Learning tutorial data, which is available on our ENVI Tutorials web page. Click the "Deep Learning" link in the ENVI Tutorial Data section to download a zip file containing the data. Extract the contents to a local directory. That file is in the shipping_containers directory.
            
            e = ENVI()
             
            
            File = Filepath('OaklandPortOrthophoto1.dat', $
              Subdir=['data','deep_learning'], Root_Dir=e.Root_Dir)
            Raster = e.OpenRaster(File)
            ModelFile = 'C:\MyTutorialFiles\TrainedModelContainers.h5'
            Model = ENVITensorFlowModel(ModelFile)
             
            
            ClassTask = ENVITask('TensorFlowPixelClassification')
            ClassTask.INPUT_RASTER = Raster
            ClassTask.INPUT_MODEL = Model
            ClassTask.OUTPUT_CLASS_ACTIVATION_RASTER_URI = e.GetTemporaryFilename()
            ClassTask.Execute
             
            
            Task = ENVITask('ClassActivationToPixelROI')
             
            
            Task.INPUT_RASTER = ClassTask.OUTPUT_CLASS_ACTIVATION_RASTER
             
            
            Task.Execute
             
            
            e.Data.Add, ClassTask.OUTPUT_CLASS_ACTIVATION_RASTER
             
            
            View = e.GetView()
            Layer = View.CreateLayer(Raster)
            roiLayer = Layer.AddRoi(Task.OUTPUT_ROI)
            Syntax
            Result = ENVITask('ClassActivationToPixelROI')
            Input properties (Set, Get): INPUT_RASTER, METHOD, OUTPUT_ROI_URI, THRESHOLD
            Output properties (Get only): OUTPUT_ROI, OUTPUT_THRESHOLD
            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. See the ENVITask topic in ENVI Help.
                             - AddParameter
- Execute
- Parameter
- ParameterNames
- RemoveParameters
Properties
            This task inherits the following properties from ENVITask:
            COMMUTE_ON_DOWNSAMPLE
            COMMUTE_ON_SUBSET
            DESCRIPTION
            DISPLAY_NAME
            NAME
            REVISION
            See the ENVITask topic in ENVI Help for details. 
            This task also contains the following properties:
            INPUT_RASTER (required)
            Specify an input class activation raster.
            METHOD (optional)
            Specify the thresholding method to use to differentiate feature and background pixels in INPUT_RASTER. This property only applies to a single feature class and is ignored for multiple feature classes. If THRESHOLD is specified, it will supersede METHOD. The following are valid values.
                             - Isodata
- Mean
- Maximum Entropy
- Minimum Error
- Moments
- Otsu (default)
OUTPUT_ROI
            This is a reference to the output ROI.
            OUTPUT_ROI_URI (optional)
            Specify a string with the fully qualified path and filename for OUTPUT_ROI.
            OUTPUT_THRESHOLD
            If THRESHOLD is not specified, then this will be the threshold calculated by METHOD. If THRESHOLD is specified, then this will be the threshold specified.
            THRESHOLD (optional)
            Specify a threshold value to use to differentiate feature and background pixels in INPUT_RASTER. If the highest feature class value for a given pixel is greater than or equal to the threshold value, the pixel will be designated as that feature class. Otherwise, it will be designated as background. If you set the THRESHOLD property, that will supersede METHOD.
            Version History
            
                                                  
                                             | Deep Learning 1.0 | Introduced | 
                     
                        | Deep Learning 1.1 | Modified METHOD and THRESHOLD properties to allow multiple classes. | 
                 
            
            See Also
            ClassActivationToClassification Task, ClassActivationToPolygonROI Task, ClassActivationToPolygonShapefile Task