This task has been depricated.
            This task initializes an untrained multiclass TensorFlow mask-based model.
            This task is part of ENVI Deep Learning, which requires a separate license and installation.
            Example
            
            e = ENVI(/HEADLESS)
             
            
            Task = ENVITask('InitializeENVINet5MultiModel')
             
            
            Task.MODEL_DESCRIPTION = 'My model description'
            Task.NCLASSES = 4
             
            
            
            Task.NBANDS = 3
             
            
            Task.Execute
            Print, Task.OUTPUT_MODEL, /IMPLIED_PRINT
            Syntax
            Result = ENVITask('InitializeENVINet5MultiModel')
            Input properties (Set, Get): MODEL_ARCHITECTURE, MODEL_DESCRIPTION, MODEL_NAME, NBANDS, NCLASSES, OUTPUT_MODEL_URI, PATCH_SIZE
            Output properties (Get only): OUTPUT_MODEL
            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:
            MODEL_ARCHITECTURE (optional)
            Specify a model architecture to use during training. The options are:
                             - 
                    SegUNet++ (default) This option is better for structural objects, such as vehicles, buildings, and shipping containers. 
- 
                    SegUNet This option is better for dynamic unpredictable objects, such as debris, clouds, and changes over time. 
MODEL_DESCRIPTION (optional)
            Specify a description of the model's capabilities.
            MODEL_NAME (optional)
            Specify the name of the model. The default value is ENVI Deep Learning.
            The default value is ENVI Deep Learning.
            NBANDS (required)
            Specify the number of bands in the training rasters that will be used to train this model (minus the mask band).
            NCLASSES (required)
            Specify the number of classes (excluding the background class).
            OUTPUT_MODEL
            This is a reference to the initialized ENVITensorFlowModel.
            OUTPUT_MODEL_URI (required)
            Specify a string with the fully qualified filename and path for the HDF5 (.h5) model file to be written.
            PATCH_SIZE (optional)
            Specify the edge length in pixels of the square patches used for training. The choices are: 208, 224, 240, 256, 272, 288, 304, 320, 336, 352, 368, 384, 400, 416, 432, 448, 464, 480, 496, 512, 528, 544, 560, 576, 592, 608, 624, 640, 656, 672, 688, 704, 720, 736, 752, 768, 784. The default is 464.
            Version History
            
                                                  
                                                      
                        | Deep Learning 1.1 | Introduced | 
                     
                        | Deep Learning 2.1 | Added MODEL_ARCHITECTURE property | 
                     
                        | Deep Learning 3.0 | Depricated | 
                              
            See Also
            ENVITensorFlowModel, TrainTensorFlowMaskModel Task