google_mlkit_image_labeling 0.2.0 google_mlkit_image_labeling: ^0.2.0 copied to clipboard
A Flutter plugin to use Google's ML Kit Image Labeling to detect and extract information about entities in an image across a broad group of categories.
Google's ML Kit Image Labeling for Flutter #
A Flutter plugin to use Google's ML Kit Image Labeling to detect and extract information about entities in an image across a broad group of categories.
Getting Started #
Before you get started read about the requirements and known issues of this plugin here.
Firebase dependency #
Image Labeling could be used with both Base Models and Custom Models. Base models are bundled with the app. Custom Models are downloaded from Firebase. Since both model options are handled in this plugin, that requires you to add Firebase to your project even if you are only using the Base Models. More details here.
To add Firebase to your project follow these steps:
Usage #
Image Labeling #
Create an instance of InputImage
Create an instance of InputImage
as explained here.
final InputImage inputImage;
Create an instance of ImageLabeler
final ImageLabelerOptions options = ImageLabelerOptions(confidenceThreshold: 0.5);
final imageLabeler = ImageLabeler(options: options);
Process image
final List<ImageLabel> labels = await imageLabeler.processImage(inputImage);
for (ImageLabel label in labels) {
final String text = label.text;
final int index = label.index;
final double confidence = label.confidence;
}
Release resources with close()
imageLabeler.close();
Load local custom model #
To use a local custom model add the tflite model to your pubspec.yaml
:
assets:
- assets/ml/
Add this method:
import 'dart:io';
import 'package:flutter/services.dart';
import 'package:path/path.dart';
import 'package:path_provider/path_provider.dart';
Future<String> _getModel(String assetPath) async {
if (io.Platform.isAndroid) {
return 'flutter_assets/$assetPath';
}
final path = '${(await getApplicationSupportDirectory()).path}/$assetPath';
await io.Directory(dirname(path)).create(recursive: true);
final file = io.File(path);
if (!await file.exists()) {
final byteData = await rootBundle.load(assetPath);
await file.writeAsBytes(byteData.buffer
.asUint8List(byteData.offsetInBytes, byteData.lengthInBytes));
}
return file.path;
}
Create an instance of [ImageLabeler]:
final modelPath = await _getModel('assets/ml/object_labeler.tflite');
final options = LocalLabelerOptions(modelPath: modelPath);
final imageLabeler = ImageLabeler(options: options);
Managing remote models #
Create an instance of model manager
final modelManager = FirebaseImageLabelerModelManager();
Check if model is downloaded
final bool response = await modelManager.isModelDownloaded(model);
Download model
final bool response = await modelManager.downloadModel(model);
Delete model
final bool response = await modelManager.deleteModel(model);
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.