Invalid training data. The output size ([128 128 140 2]) of the last layer does not match the response size ([128 128 36 2]).
2 views (last 30 days)
Show older comments
Dear All,
I have develop code for 3D U-Net. But got error when want train.
This is my code 3D U-Net. The Data can get thru this link https://drive.google.com/drive/folders/1cbKwpP8P8oblAs4_geDpRUcg8Y3IEu_j?usp=share_link
clc
clear all
close all
%testDataimages
DATASetDir = fullfile('C:\Users\USER\Downloads\HEAD & NECK\HEAD & NECK');
IMAGEDir = fullfile(DATASetDir,'ImagesTr');
volReader = @(x) matRead(x);
volds = imageDatastore(IMAGEDir, ...
'FileExtensions','.mat','ReadFcn',volReader);
% labelReader = @(x) matread(x);
matFileDir = fullfile('C:\Users\USER\Downloads\HEAD & NECK\HEAD & NECK\LabelsTr');
classNames = ["background", "tumor"];
pixelLabelID = [0 1];
% pxds = (LabelDirr,classNames,pixelLabelID, ...
% 'FileExtensions','.mat','ReadFcn',labelReader);
pxds = pixelLabelDatastore(matFileDir,classNames,pixelLabelID, ...
'FileExtensions','.mat','ReadFcn',@matRead);
volume = preview(volds);
label = preview(pxds);
volumeViewer(volume, label)
patchSize = [128 128 36];
patchPerImage = 16;
miniBatchSize = 8;
patchds = randomPatchExtractionDatastore(volds,pxds,patchSize, ...
'PatchesPerImage',patchPerImage);
patchds.MiniBatchSize = miniBatchSize;
dsTrain = transform(patchds,@augment3dPatch);
volLocVal = fullfile('C:\Users\USER\Downloads\HEAD & NECK\HEAD & NECK\ImagesVal');
voldsVal = imageDatastore(volLocVal, ...
'FileExtensions','.mat','ReadFcn',volReader);
lblLocVal = fullfile('C:\Users\USER\Downloads\HEAD & NECK\HEAD & NECK\LabelsVal');
pxdsVal = pixelLabelDatastore(lblLocVal,classNames,pixelLabelID, ...
'FileExtensions','.mat','ReadFcn',volReader);
dsVal = randomPatchExtractionDatastore(voldsVal,pxdsVal,patchSize, ...
'PatchesPerImage',patchPerImage);
dsVal.MiniBatchSize = miniBatchSize;
lgraph = layerGraph();
tempLayers = [
image3dInputLayer([128 128 36 1],"Name","image3dinput")
convolution3dLayer([3 3 3],64,"Name","Encoder-Stage-1-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Encoder-Stage-1-ReLU-1")
convolution3dLayer([3 3 3],64,"Name","Encoder-Stage-1-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Encoder-Stage-1-ReLU-2")];
lgraph = addLayers(lgraph,tempLayers);
tempLayers = [
maxPooling3dLayer([2 2 2],"Name","Encoder-Stage-1-MaxPool","Stride",[2 2 2])
convolution3dLayer([3 3 3],128,"Name","Encoder-Stage-2-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Encoder-Stage-2-ReLU-1")
convolution3dLayer([3 3 3],128,"Name","Encoder-Stage-2-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Encoder-Stage-2-ReLU-2")];
lgraph = addLayers(lgraph,tempLayers);
tempLayers = [
maxPooling3dLayer([2 2 2],"Name","Encoder-Stage-2-MaxPool","Stride",[2 2 2])
convolution3dLayer([3 3 3],256,"Name","Encoder-Stage-3-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Encoder-Stage-3-ReLU-1")
convolution3dLayer([3 3 3],256,"Name","Encoder-Stage-3-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Encoder-Stage-3-ReLU-2")];
lgraph = addLayers(lgraph,tempLayers);
tempLayers = [
dropoutLayer(0.5,"Name","Encoder-Stage-3-DropOut")
maxPooling3dLayer([2 2 2],"Name","Encoder-Stage-3-MaxPool","Stride",[2 2 2])
convolution3dLayer([3 3 3],512,"Name","Bridge-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Bridge-ReLU-1")
convolution3dLayer([3 3 3],512,"Name","Bridge-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Bridge-ReLU-2")
dropoutLayer(0.5,"Name","Bridge-DropOut")
transposedConv3dLayer([2 2 2],256,"Name","Decoder-Stage-1-UpConv","BiasLearnRateFactor",2,"Stride",[2 2 2],"WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-1-UpReLU")];
lgraph = addLayers(lgraph,tempLayers);
tempLayers = [
depthConcatenationLayer(2,"Name","Decoder-Stage-1-DepthConcatenation")
convolution3dLayer([3 3 3],256,"Name","Decoder-Stage-1-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-1-ReLU-1")
convolution3dLayer([3 3 3],256,"Name","Decoder-Stage-1-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-1-ReLU-2")
transposedConv3dLayer([2 2 2],128,"Name","Decoder-Stage-2-UpConv","BiasLearnRateFactor",2,"Stride",[2 2 2])
reluLayer("Name","Decoder-Stage-2-UpReLU")];
lgraph = addLayers(lgraph,tempLayers);
tempLayers = [
depthConcatenationLayer(2,"Name","Decoder-Stage-2-DepthConcatenation")
convolution3dLayer([3 3 3],128,"Name","Decoder-Stage-2-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-2-ReLU-1")
convolution3dLayer([3 3 3],128,"Name","Decoder-Stage-2-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-2-ReLU-2")
transposedConv3dLayer([2 2 2],64,"Name","Decoder-Stage-3-UpConv","BiasLearnRateFactor",2,"Stride",[2 2 2],"WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-3-UpReLU")];
lgraph = addLayers(lgraph,tempLayers);
tempLayers = [
depthConcatenationLayer(2,"Name","Decoder-Stage-3-DepthConcatenation")
convolution3dLayer([3 3 3],64,"Name","Decoder-Stage-3-Conv-1","Padding","same","WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-3-ReLU-1")
convolution3dLayer([3 3 3],64,"Name","Decoder-Stage-3-Conv-2","Padding","same","WeightsInitializer","he")
reluLayer("Name","Decoder-Stage-3-ReLU-2")
convolution3dLayer([1 1 1],2,"Name","Final-ConvolutionLayer","Padding","same","WeightsInitializer","he")
softmaxLayer("Name","Softmax-Layer")
pixelClassificationLayer("Name","Segmentation-Layer")];
lgraph = addLayers(lgraph,tempLayers);
% clean up helper variable
clear tempLayers;
lgraph = connectLayers(lgraph,"Encoder-Stage-1-ReLU-2","Encoder-Stage-1-MaxPool");
lgraph = connectLayers(lgraph,"Encoder-Stage-1-ReLU-2","Decoder-Stage-3-DepthConcatenation/in2");
lgraph = connectLayers(lgraph,"Encoder-Stage-2-ReLU-2","Encoder-Stage-2-MaxPool");
lgraph = connectLayers(lgraph,"Encoder-Stage-2-ReLU-2","Decoder-Stage-2-DepthConcatenation/in2");
lgraph = connectLayers(lgraph,"Encoder-Stage-3-ReLU-2","Encoder-Stage-3-DropOut");
lgraph = connectLayers(lgraph,"Encoder-Stage-3-ReLU-2","Decoder-Stage-1-DepthConcatenation/in2");
lgraph = connectLayers(lgraph,"Decoder-Stage-1-UpReLU","Decoder-Stage-1-DepthConcatenation/in1");
lgraph = connectLayers(lgraph,"Decoder-Stage-2-UpReLU","Decoder-Stage-2-DepthConcatenation/in1");
lgraph = connectLayers(lgraph,"Decoder-Stage-3-UpReLU","Decoder-Stage-3-DepthConcatenation/in1");
plot(lgraph);
options = trainingOptions('sgdm', ...
'MiniBatchSize',1, ...
'MaxEpochs',100, ...
'InitialLearnRate',1e-3, ...
'Shuffle','every-epoch', ...
'ValidationData',dsVal, ...
'ValidationFrequency',200, ...
'Verbose',false, ...
'Plots','training-progress', ...
'ExecutionEnvironment','cpu');
doTraining = true;
if doTraining
modelDateTime = datestr(now,'dd-mmm-yyyy-HH-MM-SS');
[net,info] = trainNetwork(dsTrain,lgraph,options);
save(['trained3DUNet-' modelDateTime '-Epoch-' num2str(maxEpochs) '.mat'],'net');
else
load('trained3DVNet-07-Jun-2022-13-45-30-Epoch-250.mat');
end
This is my ERROR
Error using trainNetwork
Invalid training data. The output size ([128 128 140 2]) of the last layer does not match the response size ([128 128 36
2]).
Answers (0)
See Also
Categories
Find more on Deep Learning with Images in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!