how to fulfill GAN (Generative Adversarial Networks ) or DCGAN in matlab?
10 vues (au cours des 30 derniers jours)
Afficher commentaires plus anciens
Jack Xiao
le 13 Juil 2018
Commenté : Walter Roberson
le 13 Avr 2020
I find that there is no example demo for GAN (Generative Adversarial Networks ) or DCGAN. I wonder how to fulfill GAN in matlab? if for GAN, is the last output of the generator RegressionOutputLayer or others?
1 commentaire
Réponse acceptée
Muhammad Usama Sharaf SAAFI
le 7 Jan 2020
Modifié(e) : Muhammad Usama Sharaf SAAFI
le 7 Jan 2020
Only MATLAB 2019b has demo example of GAN.Example code also works on GPU but you should have CUDA 10.1 driver installed in your system However you can also look below link if you donot have Matlab 2019b.
0 commentaires
Plus de réponses (6)
Walter Roberson
le 13 Juil 2018
Generative Adversarial Neural Networks are not available in any Mathworks product. They are not supported by the Neural Network toolbox.
2 commentaires
Niklas
le 7 Juil 2019
In our team we realize GANs with regression layers as output layer. Works fine in our cases.
You also have the possibility to define own layers: See this doc https://de.mathworks.com/help/deeplearning/ug/define-custom-deep-learning-layers.html for further Informations.
Best wishes, Niklas
2 commentaires
Niklas
le 8 Juil 2019
Unfortunately I can not upload the code.
We use a RBM for our generator model. This we pretrain with own code but this part is very similar to the code snippets from Geoffrey Hinton. We also train a CNN for the descriminator part before we stick both models together. So after pretraining the CNN is very good in decisions whether an image is generated or a real one.
Afterwards we use some tricks. First we created a custom layer for the input where we are able to insert the seed for the generator and a real image. We pass the real image around the RBM. (Please note that you need a custom Sigmoid Activation Layer for RBMs). Afterwards we use custom layers in the CNN to identify both images simultaneously with the same weights as from the pretraining. You can just copy the Matlab Layers for that and modify them a bit. Finally we created an output layer for this custom CNN. There we track the differences between both classification probabilities. Note that you have to think about a correct Loss Function there. We train the whole model by inserting real images with different random seeds and a final result of 0 difference between both classifications.
Just a note on "easyness". We only do that because we need MATLAB Code at the end to export them on our embedded systems. If you just want to discover what GANs can do, you should for now stick to TensorFlow as its much easier. They have a good example on their website. But maybe Mathworks add native support for GANs in a future release?!
Jony Castagna
le 27 Sep 2019
Modifié(e) : Jony Castagna
le 27 Sep 2019
Just looked at version 2019b: they support GANs now! If only the Matlab base + NN toolbox was free...
1 commentaire
Walter Roberson
le 13 Avr 2020
If only food and rent and property taxes were all free so that Mathworks employees didn't need to be paid... ?
Yui Chun Leung
le 4 Avr 2020
I implemented different types of GANs with Matlab, including DCGAN, CycleGAN and more.
0 commentaires
Voir également
Catégories
En savoir plus sur Image Data Workflows 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!