Generative adversarial network: Difference between revisions
Line 41: | Line 41: | ||
[https://arxiv.org/abs/1707.04993 Paper]<br> | [https://arxiv.org/abs/1707.04993 Paper]<br> | ||
MoCoGAN: Decomposing Motion and Content for Video Generation<br> | MoCoGAN: Decomposing Motion and Content for Video Generation<br> | ||
===Video Prediction=== | |||
* [http://openaccess.thecvf.com/content_iccv_2017/html/Liang_Dual_Motion_GAN_ICCV_2017_paper.html Dual Motion GAN] | |||
** Have a frame generator and a motion generator | |||
** Combine the outputs of both generators using a fusing layer | |||
** Trained using a frame discriminator and a motion discriminator. (Each generator are trained with both discriminators) | |||
==Resources== | ==Resources== | ||
* [https://github.com/soumith/ganhacks Tricks for Training GANs] | * [https://github.com/soumith/ganhacks Tricks for Training GANs] |
Revision as of 14:34, 7 January 2020
GANs are generative adversarial networks. They were developed by Ian Goodfellow.
Goal: Learn to generate examples from the same distribution as your training set.
Basis Structure
GANs consist of a generator and a discriminator.
For iteration i For iteration j Update Discriminator Update Generator
Variations
Conditional GAN
Paper
Feed data y to both generator and discriminator
Wasserstein GAN
Paper
Medium post
This new WGAN-GP loss function improves the stability of training.
Normally, the discriminator is trained with a cross-entropy with sigmoid loss function.
The WGAN proposes using Wasserstein distance which is implemented by removing the cross-entropy+sigmoid
and clipping (clamp) the weights on the discriminator to a range \(\displaystyle [-c, c]\).
However, weight clipping leads to other issues which limit the critic.
Instead of clipping, WGAN-GP proposes gradient penalty to enforce 1-Lipschitz .
Applications
CycleGan
InfoGAN
SinGAN
Paper
Website
Github Official PyTorch Implementation
SinGAN: Learning a Generative Model from a Single Natural Image
MoCoGAN
Paper
MoCoGAN: Decomposing Motion and Content for Video Generation
Video Prediction
- Dual Motion GAN
- Have a frame generator and a motion generator
- Combine the outputs of both generators using a fusing layer
- Trained using a frame discriminator and a motion discriminator. (Each generator are trained with both discriminators)