edited3
This commit is contained in:
Родитель
a67686827f
Коммит
fec6201851
|
@ -4,7 +4,7 @@ This full-length tutorial shows how to use Azure Machine Learning services (prev
|
|||
|
||||
Skin cancer is the most common form of cancer, globally accounting for at least 40% of cases. If detected at an early stage, it can be controlled. We want to create a mobile AI application for everyone to be able to quickly detect whether they need to seek help. The app can flag a set of images which in turn helps the doctors to be more efficient and only focus on the most critical images.
|
||||
|
||||
For this tutorial, we use the ISIC Skin Cancer [dataset] (https://isic-archive.com/). You can refer to this GitHub [link] (https://github.com/antriv/ISIC-Dataset-Downloader) to find out how to download this research dataset.
|
||||
For this tutorial, we use the ISIC Skin Cancer dataset (https://isic-archive.com/). You can refer to this GitHub link (https://github.com/antriv/ISIC-Dataset-Downloader) to find out how to download this research dataset.
|
||||
In this tutorial, we -
|
||||
1) Build the Model using Azure Machine Learning
|
||||
2) Convert the model to CoreML
|
||||
|
@ -27,7 +27,7 @@ We upload the root folder as a project in AML Workbench. Once the project is cre
|
|||
To bring the trained model on an iPhone and run it on the phone without any connection, we use the CoreML with a Xamarin App. We pip install coreML in the Workbench & run the keras_to_coreml_converter.py. This creates the mlmodel compatible to run on iOS.
|
||||
|
||||
Now to use this CoreML model witha Xamarin app, we follow 4 steps:
|
||||
1) Download asample Xamarin app fron [here] (https://github.com/Azure-Samples/cognitive-services-ios-customvision-sample)
|
||||
1) Download asample Xamarin app fron here (https://github.com/Azure-Samples/cognitive-services-ios-customvision-sample)
|
||||
2) We replace the custom Vision API model here with our custom model which we created using AML Workbench.
|
||||
3) We compile the coreml model in Xcode 9 or manually using the xcrun command.
|
||||
4) We add a compiled CoreML model to the Resources directory of the project.
|
||||
|
|
Загрузка…
Ссылка в новой задаче