Skip to content

A flutter plugin that implements google's standalone ml kit

License

Notifications You must be signed in to change notification settings

rulefahd/Google-Ml-Kit-plugin

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Google's ML Kit for Flutter

Google's ML Kit for Flutter is a set of Flutter plugins that enable Flutter apps to use Google's standalone ML Kit.

Features

Vision APIs

Feature Plugin Source Code Android iOS
Barcode Scanning google_mlkit_barcode_scanning Pub Version GitHub
Face Detection google_mlkit_face_detection Pub Version GitHub
Image Labeling google_mlkit_image_labeling Pub Version GitHub
Object Detection and Tracking google_mlkit_object_detection Pub Version GitHub
Text Recognition google_mlkit_text_recognition Pub Version GitHub
Text Recognition V2 google_mlkit_text_recognition Pub Version GitHub
Digital Ink Recognition google_mlkit_digital_ink_recognition Pub Version GitHub
Pose Detection google_mlkit_pose_detection Pub Version GitHub
Selfie Segmentation google_mlkit_selfie_segmentation Pub Version GitHub

Natural Language APIs

Feature Plugin Source Code Android iOS
Language Identification google_mlkit_language_id Pub Version GitHub
On-Device Translation google_mlkit_translation Pub Version GitHub
Smart Reply google_mlkit_smart_reply Pub Version GitHub
Entity Extraction google_mlkit_entity_extraction Pub Version GitHub

Requirements

iOS

  • Minimum iOS Deployment Target: 10.0
  • Xcode 13 or newer
  • Swift 5
  • ML Kit only supports 64-bit architectures (x86_64 and arm64). Check this list to see if your device has the required device capabilities.

Since ML Kit does not support 32-bit architectures (i386 and armv7), you need to exclude armv7 architectures in Xcode in order to run flutter build ios or flutter build ipa. More info here.

Go to Project > Runner > Building Settings > Excluded Architectures > Any SDK > armv7

Then your Podfile should look like this:

# add this line:
$iOSVersion = '10.0'

post_install do |installer|
  # add these lines:
  installer.pods_project.build_configurations.each do |config|
    config.build_settings["EXCLUDED_ARCHS[sdk=*]"] = "armv7"
    config.build_settings['IPHONEOS_DEPLOYMENT_TARGET'] = $iOSVersion
  end
  
  installer.pods_project.targets.each do |target|
    flutter_additional_ios_build_settings(target)
    
    # add these lines:
    target.build_configurations.each do |config|
      if Gem::Version.new($iOSVersion) > Gem::Version.new(config.build_settings['IPHONEOS_DEPLOYMENT_TARGET'])
        config.build_settings['IPHONEOS_DEPLOYMENT_TARGET'] = $iOSVersion
      end
    end
    
  end
end

Notice that the minimum IPHONEOS_DEPLOYMENT_TARGET is 10.0, you can set it to something newer but not older.

Android

  • minSdkVersion: 21
  • targetSdkVersion: 29

Migrating from ML Kit for Firebase

When Migrating from ML Kit for Firebase read this guide.

For Android details read this.

For iOS details read this.

Firebase dependency: Custom Models

Google's standalone ML Kit library does have any direct dependency with Firebase. As designed by Google, you do not need to include Firebase in your project in order to use ML Kit. However, some ML Kit APIs have the possibility to be used with Custom Models, that means that the default models can be replaced with custom TensorFlow Lite models.

The plugins that allow Custom Models are:

iOS Additional Setup

To use custom models hosted in firebase in iOS, you have to update your app's Podfile.

First, include the GoogleMLKit/LinkFirebase pod at the top of your Podfile:

platform :ios, '10.0'

# Enable firebase-hosted models #
pod 'GoogleMLKit/LinkFirebase'

Next, add the preprocessor flag to enable the firebase remote models at compile time. To do that, update your existing build_configurations loop in the post_install step with the following:

post_install do |installer|
  installer.pods_project.targets.each do |target|
    ... # Here are some configurations automatically generated by flutter

    target.build_configurations.each do |config|
      # Enable firebase-hosted ML models
      config.build_settings['GCC_PREPROCESSOR_DEFINITIONS'] ||= [
        '$(inherited)',
        'MLKIT_FIREBASE_MODELS=1',
      ]
    end
  end
end

To setup Firebase for your project check this links:

Also please note that in latest versions, google_ml_kit has become an umbrella plugin including all the plugin listed in Features. For that reason you will need to configure Firebase in your project if using google_ml_kit. We recommend you start using the plugins listed in Features rather than using google_ml_kit, otherwise you will be including unnecessary dependencies in your project.

Example app

Find the example app here.

Contributing

Contributions are welcome. In case of any problems look at existing issues, if you cannot find anything related to your problem then open an issue. Create an issue before opening a pull request for non trivial fixes. In case of trivial fixes open a pull request directly.

About

A flutter plugin that implements google's standalone ml kit

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Dart 45.8%
  • Java 26.4%
  • Objective-C 23.8%
  • Ruby 3.9%
  • C 0.1%