liver tumor image segmentation

8 vues (au cours des 30 derniers jours)
Verdes
Verdes le 20 Mai 2023
Commenté : Yurii Volvenko le 27 Fév 2024
hi, I have a CT image 2D and the mask for it. I need to do a MATLAB code for U-NET that I can train for this images and also test images. Can you help me with some ideas? Thank you.
  2 commentaires
Image Analyst
Image Analyst le 20 Mai 2023
You're welcome. That was easy. Thanks for the announcement. Good luck with it.
To learn fundamental concepts, invest 2 hours of your time here:
Yurii Volvenko
Yurii Volvenko le 27 Fév 2024
Hi! I have the same task that you had. Did you find the answer to your question? I would really appreciate it if you would share it.

Connectez-vous pour commenter.

Réponses (1)

Coo Boo
Coo Boo le 20 Mai 2023
Hi
A sample code as a starting point for training and evaluating a U-Net model:
% Load CT images and their corresponding masks
ct_images = imageDatastore('path to CT images');
masks = imageDatastore('path to masks');
% Resize images and masks to the same size
target_size = [256, 256];
ct_images = augmentedImageDatastore(target_size, ct_images);
masks = augmentedImageDatastore(target_size, masks);
% Split data into training and validation sets
[train_images, val_images] = splitEachLabel(ct_images, 0.8);
[train_masks, val_masks] = splitEachLabel(masks, 0.8);
% Create U-Net model with 4 levels and 64 filters per layer
num_levels = 4;
num_filters = 64;
unet_layers = unetLayers([256, 256, 1], num_filters, 'NumLevels', num_levels);
% Specify training options
opts = trainingOptions('adam', ...
'InitialLearnRate', 1e-4, ...
'MiniBatchSize', 16, ...
'MaxEpochs', 50, ...
'ValidationData', {val_images, val_masks}, ...
'ValidationFrequency', 10, ...
'Plots', 'training-progress');
% Train the U-Net model
trained_unet = trainNetwork(train_images, train_masks, unet_layers, opts);
% Make predictions on test images
test_images = imageDatastore('path to test images');
test_images = augmentedImageDatastore(target_size, test_images);
test_masks = predict(trained_unet, test_images);
% Evaluate performance of U-Net model
metrics = evaluateSemanticSegmentation(test_masks, test_masks);

Catégories

En savoir plus sur Deep Learning Toolbox dans Help Center et File Exchange

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by