Skip to content

Latest commit

 

History

History
66 lines (49 loc) · 2.23 KB

README.md

File metadata and controls

66 lines (49 loc) · 2.23 KB

tensorflow_lite_flutter

A flutter app to demonstrate usage of tensor flow lite ML.

App Demo Teachable Machine

The "TensorFlow" model is trained using Teachable Machines. The model is trained with different texture colors of walls. App will recognize the color and classify the color according to best match. This app will load a pre-trained model and start classification on frames received from Camera Controller. App will show results in real-time along with confidence percentages.

Model can be downloaded from this download link and re-loaded on "Teachable Machines" website.

Labels

Class Id Label Name
0 Black Texture
1 Blue Texture
2 Green Texture
3 Orange Texture
4 Pink Texture
5 Purple Texture
6 Red Texture
7 White Texture
8 Yellow Texture

TFLite Helper Class

    // Load Model
    static Future<String> loadModel() async{
        AppHelper.log("loadModel", "Loading model..");
    
        return Tflite.loadModel(
          model: "assets/model_unquant.tflite",
          labels: "assets/labels.txt",
        );
    }
    
    //Start Classification on CameraImage frames
    static classifyImage(CameraImage image) async {
    
        await Tflite.runModelOnFrame(
                bytesList: image.planes.map((plane) {
                  return plane.bytes;
                }).toList(),
                numResults: 5)
            .then((value) {
      
          //Send results
          tfLiteResultsController.add(_outputs);
        });
    }

Getting Started

This project is a starting point for a Flutter application.

A few resources to get you started if this is your first Flutter project:

For help getting started with Flutter, view our online documentation, which offers tutorials, samples, guidance on mobile development, and a full API reference.