Classify Pixels Using Deep Learning (Image Analyst)

Available with Image Analyst license.

Summary

Runs a trained deep learning model on an input raster to produce a classified raster, with each valid pixel having an assigned class label.

This tool requires a model definition file containing trained model information. The model can be trained using the Train Deep Learning Model tool or by a third-party training software such as TensorFlow, PyTorch, or Keras. The model definition file can be an Esri model definition JSON file (.emd) or a deep learning model package, and it must contain the path to the Python raster function to be called to process each object and the path to the trained binary deep learning model file.

Usage

  • You must install the proper deep learning framework Python API (such as TensorFlow or PyTorch) in the AllSource Python environment; otherwise, an error will occur when you add the Esri model definition file to the tool. Obtain the appropriate framework information from the creator of the Esri model definition file.

    To set up your machine to use deep learning frameworks in AllSource, see Install deep learning frameworks for ArcGIS.

  • This tool calls a third-party deep learning Python API (such as TensorFlow, PyTorch, or Keras) and uses the specified Python raster function to process each object.

  • Sample use cases for this tool are available on the Esri Python raster function GitHub page. You can also write custom Python modules by following examples and instructions in the GitHub repository.

  • The Model Definition parameter value can be an Esri model definition JSON file (.emd), a JSON string, or a deep learning model package (.dlpk). A JSON string is useful when this tool is used on the server so you can paste the JSON string rather than upload the .emd file. The .dlpk file must be stored locally.

  • For more information about deep learning, see Deep learning in AllSource.

  • The following code sample uses the Esri model definition file (.emd):

    {
        "Framework":"TensorFlow",
        "ModelConfiguration":"deeplab",
    
        "ModelFile":"\\Data\\ImgClassification\\TF\\froz_inf_graph.pb",
        "ModelType":"ImageClassification",
        "ExtractBands":[0,1,2],
        "ImageHeight":513,
        "ImageWidth":513,
    
        "Classes" : [
            {
                "Value":0,
                "Name":"Evergreen Forest",
                "Color":[0, 51, 0]
             },
             {
                "Value":1,
                "Name":"Grassland/Herbaceous",
                "Color":[241, 185, 137]
             },
             {
                "Value":2,
                "Name":"Bare Land",
                "Color":[236, 236, 0]
             },
             {
                "Value":3,
                "Name":"Open Water",
                "Color":[0, 0, 117]
             },
             {
                "Value":4,
                "Name":"Scrub/Shrub",
                "Color":[102, 102, 0]
             },
             {
                "Value":5,
                "Name":"Impervious Surface",
                "Color":[236, 236, 236]
             }
        ]
    }
  • The input raster can be a single raster, multiple rasters, or a feature class with images attached. For more information about attachments, see Add or remove file attachments.

  • Increasing the batch size can improve tool performance; however, as the batch size increases, more memory is used. If an out of memory error occurs, use a smaller batch size. The batch_size value can be adjusted using the Arguments parameter.

  • Batch sizes are square numbers, such as 1, 4, 9, 16, 25, 64 and so on. If the input value is not a perfect square, the highest possible square value is used. For example, if a value of 6 is specified, it means that the batch size is set to 4.

  • For information about requirements for running this tool and issues you may encounter, see Deep Learning frequently asked questions.

Parameters

LabelExplanationData Type
Input Raster

The input raster dataset that will be classified.

The input can be a single raster, multiple rasters in a mosaic dataset, an image service, a folder of images, or a feature class with image attachments.

Raster Dataset; Raster Layer; Mosaic Layer; Image Service; Map Server; Map Server Layer; Internet Tiled Layer; Folder; Feature Layer; Feature Class
Model Definition

The Model Definition parameter value can be an Esri model definition JSON file (.emd), a JSON string, or a deep learning model package (.dlpk). A JSON string is useful when this tool is used on the server so you can paste the JSON string rather than upload the .emd file. The .dlpk file must be stored locally.

It contains the path to the deep learning binary model file, the path to the Python raster function to be used, and other parameters such as preferred tile size or padding.

File; String
Arguments
(Optional)

The function arguments are defined in the Python raster function class. This is where you list additional deep learning parameters and arguments for experiments and refinement, such as a confidence threshold for adjusting sensitivity. The names of the arguments are populated from reading the Python module.

Value Table
Processing Mode

Specifies how all raster items in a mosaic dataset or an image service will be processed. This parameter is applied when the input raster is a mosaic dataset or an image service.

  • Process as mosaicked imageAll raster items in the mosaic dataset or image service will be mosaicked together and processed. This is the default.
  • Process all raster items separatelyAll raster items in the mosaic dataset or image service will be processed as separate images.
String
Output Folder
(Optional)

The folder where the output classified rasters will be stored. A mosaic dataset will be generated using the classified rasters in this folder.

This parameter is required when the input raster is a folder of images or a mosaic dataset in which all items are to be processed separately. The default is a folder in the project folder.

Folder
Output Features
(Optional)

The feature class where the output classified rasters will be stored.

This parameter is required when the input raster is a feature class of images.

Feature Class

Return Value

LabelExplanationData Type
Output Raster Dataset

The name of the raster or mosaic dataset containing the result.

Raster Dataset

ClassifyPixelsUsingDeepLearning(in_raster, in_model_definition, {arguments}, processing_mode, {out_classified_folder}, {out_featureclass})
NameExplanationData Type
in_raster

The input raster dataset that will be classified.

The input can be a single raster, multiple rasters in a mosaic dataset, an image service, a folder of images, or a feature class with image attachments.

Raster Dataset; Raster Layer; Mosaic Layer; Image Service; Map Server; Map Server Layer; Internet Tiled Layer; Folder; Feature Layer; Feature Class
in_model_definition

The in_model_definition parameter value can be an Esri model definition JSON file (.emd), a JSON string, or a deep learning model package (.dlpk). A JSON string is useful when this tool is used on the server so you can paste the JSON string rather than upload the .emd file. The .dlpk file must be stored locally.

It contains the path to the deep learning binary model file, the path to the Python raster function to be used, and other parameters such as preferred tile size or padding.

File; String
arguments
[arguments,...]
(Optional)

The function arguments are defined in the Python raster function class. This is where you list additional deep learning parameters and arguments for experiments and refinement, such as a confidence threshold for adjusting sensitivity. The names of the arguments are populated from reading the Python module.

Value Table
processing_mode

Specifies how all raster items in a mosaic dataset or an image service will be processed. This parameter is applied when the input raster is a mosaic dataset or an image service.

  • PROCESS_AS_MOSAICKED_IMAGEAll raster items in the mosaic dataset or image service will be mosaicked together and processed. This is the default.
  • PROCESS_ITEMS_SEPARATELYAll raster items in the mosaic dataset or image service will be processed as separate images.
String
out_classified_folder
(Optional)

The folder where the output classified rasters will be stored. A mosaic dataset will be generated using the classified rasters in this folder.

This parameter is required when the input raster is a folder of images or a mosaic dataset in which all items are to be processed separately. The default is a folder in the project folder.

Folder
out_featureclass
(Optional)

The feature class where the output classified rasters will be stored.

This parameter is required when the input raster is a feature class of images.

Feature Class

Return Value

NameExplanationData Type
out_classified_raster

The name of the raster or mosaic dataset containing the result.

Raster Dataset

Code sample

ClassifyPixelsUsingDeepLearning example 1 (Python window)

This example classifies a raster based on a custom pixel classification using the ClassifyPixelsUsingDeepLearning function.

# Import system modules
import arcpy
from arcpy.ia import *

# Check out the ArcGIS Image Analyst extension license
arcpy.CheckOutExtension("ImageAnalyst")

ClassifyPixelsUsingDeepLearning("c:/classifydata/moncton_seg.tif",
     "c:/classifydata/moncton.tif", "c:/classifydata/moncton_sig.emd")
ClassifyPixelsUsingDeepLearning example 2 (stand-alone script)

This example classifies a raster based on a custom pixel classification using the ClassifyPixelsUsingDeepLearning function.

# Import system modules
import arcpy
from arcpy.ia import *


# Set local variables
in_raster = "c:\\classifydata\\moncton_seg.tif"
in_model_definition = "c:\\classifydata\\moncton_sig.emd"
model_arguments = "padding 0; batch_size 16"
processing_mode = "PROCESS_AS_MOSAICKED_IMAGE"

# Check out the ArcGIS Image Analyst extension license
arcpy.CheckOutExtension("ImageAnalyst")

# Execute 
Out_classified_raster = ClassifyPixelsUsingDeepLearning(in_raster, 
                   in_model_definition, model_arguments, processing_mode)
Out_classified_raster.save("c:\\classifydata\\classified_moncton.tif")