Output size of GAN Example
4 ビュー (過去 30 日間)
古いコメントを表示
Hello,
I am using the example of GAN to generate images, and I would like the output generated to be of a different size than 64x64x3, I've tried to change several parameters but I can't get it.
Any ideas?
Thanks in advance.
3 件のコメント
Sai Bhargav Avula
2020 年 5 月 11 日
Can you give the link which example you referred to? Also attach the code that you tried.
回答 (1 件)
Sai Bhargav Avula
2020 年 5 月 11 日
編集済み: Sai Bhargav Avula
2020 年 5 月 11 日
Hi,
The final size depends on the generator network architecture.
One way to achieve it is to change the filtersize of the generator may not be the ideal case for this example.
The ideal way is, based on your required output size you have to add transposedConv2dLayer to the architecture with proper filter size.
For example if you want the size to be 128*128 then simply add one more transposedConv2dLayer to the architecture
Remember you need to adjust the filtersize and channels accordingly
Hope this helps!
3 件のコメント
sara almheiri
2020 年 7 月 15 日
I keep getting a dlfeval error when I do the following adjustments. I would like to generate a 640x640 output size image but first I want to workout your solution. Would love to here back from you.
%Augment data
augmenter = imageDataAugmenter( ...
'RandXReflection',true, ...
'RandScale',[1 2]);
augimds = augmentedImageDatastore([128 128],imds,'DataAugmentation',augmenter);
%Define Generator Netwrok
filterSize = 5;
numFilters = 128;
numLatentInputs = 100;
projectionSize = [4 4 512];
layersGenerator = [
imageInputLayer([1 1 numLatentInputs],'Normalization','none','Name','in')
projectAndReshapeLayer(projectionSize,numLatentInputs,'proj');
transposedConv2dLayer(filterSize,8*numFilters,'Name','tconv1')
batchNormalizationLayer('Name','bnorm1')
reluLayer('Name','relu1')
transposedConv2dLayer(filterSize,4*numFilters,'Stride',2,'Cropping','same','Name','tconv2')
batchNormalizationLayer('Name','bnorm2')
reluLayer('Name','relu2')
transposedConv2dLayer(filterSize,2*numFilters,'Stride',2,'Cropping','same','Name','tconv3')
batchNormalizationLayer('Name','bnorm3')
reluLayer('Name','relu3')
transposedConv2dLayer(filterSize,3,'Stride',2,'Cropping','same','Name','tconv4')
tanhLayer('Name','tanh')];
lgraphGenerator = layerGraph(layersGenerator);
dlnetGenerator = dlnetwork(lgraphGenerator);
Abdullah alsuhail
2020 年 8 月 27 日
Hi Sara,
Did you find the solution? I stuck with the same problem.
I will appreciate if you can share the code here.
Thank you so much
参考
カテゴリ
Help Center および File Exchange で Image Data Workflows についてさらに検索
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!