Integrate image segmenters

Image segmenters predict whether each pixel of an image is associated with a certain class. This is in contrast to object detection, which detects objects in rectangular regions, and image classification, which classifies the overall image. See the image segmentation overview for more information about image segmenters.

Use the Task Library ImageSegmenter API to deploy your custom image segmenters or pretrained ones into your mobile apps.

Key features of the ImageSegmenter API

  • Input image processing, including rotation, resizing, and color space conversion.

  • Label map locale.

  • Two output types, category mask and confidence masks.

  • Colored label for display purpose.

Supported image segmenter models

The following models are guaranteed to be compatible with the ImageSegmenter API.

Run inference in Java

See the Image Segmentation reference app for an example of how to use ImageSegmenter in an Android app.

Step 1: Import Gradle dependency and other settings

Copy the .tflite model file to the assets directory of the Android module where the model will be run. Specify that the file should not be compressed, and add the TensorFlow Lite library to the module’s build.gradle file:

android {
    // Other settings

    // Specify tflite file should not be compressed for the app apk
    aaptOptions {
        noCompress "tflite"

dependencies {
    // Other dependencies

    // Import the Task Vision Library dependency (NNAPI is included)
    implementation 'org.tensorflow:tensorflow-lite-task-vision'
    // Import the GPU delegate plugin Library for GPU inference
    implementation 'org.tensorflow:tensorflow-lite-gpu-delegate-plugin'

Step 2: Using the model

// Initialization
ImageSegmenterOptions options =
ImageSegmenter imageSegmenter =
    ImageSegmenter.createFromFileAndOptions(context, modelFile, options);

// Run inference
List<Segmentation> results = imageSegmenter.segment(image);

See the source code and javadoc for more options to configure ImageSegmenter.

Run inference in iOS

Step 1: Install the dependencies

The Task Library supports installation using CocoaPods. Make sure that CocoaPods is installed on your system. Please see the CocoaPods installation guide for instructions.

Please see the CocoaPods guide for details on adding pods to an Xcode project.

Add the TensorFlowLiteTaskVision pod in the Podfile.

target 'MyAppWithTaskAPI' do
  pod 'TensorFlowLiteTaskVision'

Make sure that the .tflite model you will be using for inference is present in your app bundle.

Step 2: Using the model


// Imports
import TensorFlowLiteTaskVision

// Initialization
guard let modelPath = Bundle.main.path(forResource: "deeplabv3",
                                            ofType: "tflite") else { return }

let options = ImageSegmenterOptions(modelPath: modelPath)

// Configure any additional options:
// options.outputType = OutputType.confidenceMasks

let segmenter = try ImageSegmenter.segmenter(options: options)

// Convert the input image to MLImage.
// There are other sources for MLImage. For more details, please see:
guard let image = UIImage (named: "plane.jpg"), let mlImage = MLImage(image: image) else { return }

// Run inference
let segmentationResult = try segmenter.segment(mlImage: mlImage)

Objective C

// Imports
#import <TensorFlowLiteTaskVision/TensorFlowLiteTaskVision.h>

// Initialization
NSString *modelPath = [[NSBundle mainBundle] pathForResource:@"deeplabv3" ofType:@"tflite"];

TFLImageSegmenterOptions *options =
    [[TFLImageSegmenterOptions alloc] initWithModelPath:modelPath];

// Configure any additional options:
// options.outputType = TFLOutputTypeConfidenceMasks;

TFLImageSegmenter *segmenter = [TFLImageSegmenter imageSegmenterWithOptions:options

// Convert the input image to MLImage.
UIImage *image = [UIImage imageNamed:@"plane.jpg"];

// There are other sources for GMLImage. For more details, please see:
GMLImage *gmlImage = [[GMLImage alloc] initWithImage:image];

// Run inference
TFLSegmentationResult *segmentationResult =
    [segmenter segmentWithGMLImage:gmlImage error:nil];

See the source code for more options to configure TFLImageSegmenter.

Run inference in Python

Step 1: Install the pip package

pip install tflite-support

Step 2: Using the model

# Imports
from tflite_support.task import vision
from tflite_support.task import core
from tflite_support.task import processor

# Initialization
base_options = core.BaseOptions(file_name=model_path)
segmentation_options = processor.SegmentationOptions(
options = vision.ImageSegmenterOptions(base_options=base_options, segmentation_options=segmentation_options)
segmenter = vision.ImageSegmenter.create_from_options(options)

# Alternatively, you can create an image segmenter in the following manner:
# segmenter = vision.ImageSegmenter.create_from_file(model_path)

# Run inference
image_file = vision.TensorImage.create_from_file(image_path)
segmentation_result = segmenter.segment(image_file)

See the source code for more options to configure ImageSegmenter.

Run inference in C++

// Initialization
ImageSegmenterOptions options;
std::unique_ptr<ImageSegmenter> image_segmenter = ImageSegmenter::CreateFromOptions(options).value();

// Create input frame_buffer from your inputs, `image_data` and `image_dimension`.
// See more information here: tensorflow_lite_support/cc/task/vision/utils/frame_buffer_common_utils.h
std::unique_ptr<FrameBuffer> frame_buffer = CreateFromRgbRawBuffer(
      image_data, image_dimension);

// Run inference
const SegmentationResult result = image_segmenter->Segment(*frame_buffer).value();

See the source code for more options to configure ImageSegmenter.

Example results

Here is an example of the segmentation results of deeplab_v3, a generic segmentation model available on TensorFlow Hub.


Color Legend:
 (r: 000, g: 000, b: 000):
  index       : 0
  class name  : background
 (r: 128, g: 000, b: 000):
  index       : 1
  class name  : aeroplane

# (omitting multiple lines for conciseness) ...

 (r: 128, g: 192, b: 000):
  index       : 19
  class name  : train
 (r: 000, g: 064, b: 128):
  index       : 20
  class name  : tv
Tip: use a color picker on the output PNG file to inspect the output mask with
this legend.

The segmentation category mask should looks like:


Try out the simple CLI demo tool for ImageSegmenter with your own model and test data.

Model compatibility requirements

The ImageSegmenter API expects a TFLite model with mandatory TFLite Model Metadata. See examples of creating metadata for image segmenters using the TensorFlow Lite Metadata Writer API.

  • Input image tensor (kTfLiteUInt8/kTfLiteFloat32)

    • image input of size [batch x height x width x channels].
    • batch inference is not supported (batch is required to be 1).
    • only RGB inputs are supported (channels is required to be 3).
    • if type is kTfLiteFloat32, NormalizationOptions are required to be attached to the metadata for input normalization.
  • Output masks tensor: (kTfLiteUInt8/kTfLiteFloat32)

    • tensor of size [batch x mask_height x mask_width x num_classes], where batch is required to be 1, mask_width and mask_height are the dimensions of the segmentation masks produced by the model, and num_classes is the number of classes supported by the model.
    • optional (but recommended) label map(s) can be attached as AssociatedFile-s with type TENSOR_AXIS_LABELS, containing one label per line. The first such AssociatedFile (if any) is used to fill the label field (named as class_name in C++) of the results. The display_name field is filled from the AssociatedFile (if any) whose locale matches the display_names_locale field of the ImageSegmenterOptions used at creation time ("en" by default, i.e. English). If none of these are available, only the index field of the results will be filled.