How to segment color image(Skin lesion) with Unet and transfert learning?

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Samia OUKIL
Samia OUKIL le 11 Mai 2020
Hello, I am a beginner in deep learning! So,I have a medical image database (Skin lesion) to segment with U-net and transfer learning! For that, I downloaded " u-net-release-2015-10-02.tar.gz"(https://lmb.informatik.uni-freiburg.de/people/ronneber/u-net/) but I don't know how to segment my database!
Please, if you can help and guide me to segment with Unet and how to use transfer learning?
  1 commentaire
mohd akmal masud
mohd akmal masud le 19 Juil 2023
First you have to groundtruth labeling your data.
Defind your data,

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Réponses (1)

Prasanna
Prasanna le 28 Oct 2024
Hi Samia,
To segment skin lesion images using Unet, you can follow the below steps:
  • Setup the MATLAB environment, and extract the U-Net files from the contents of 'u-net-release-2015-10-02.tar.gz'.
  • Organize your images and masks into two folders: one for the images and another for the masks. Then, Preprocess the data and split data for training and validation
  • Create a U-Net model using built-in functions such as the 'unet' function. To use transfer learning, you can modify the U-Net architecture to include a pre-trained network such as the 'resnet50' as the encoder. Train the model with appropriate training options to segment skin lesions.
For more information on U-Net and transfer learning to U-Net, refer the following resources:
Hope this helps!

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