Title
Energy-based Generative Adversarial Network.
Abstract
We introduce the Energy-based Generative Adversarial Network model (EBGAN) which views the discriminator as an energy function that attributes low energies to the regions near the data manifold and higher energies to other regions. Similar to the probabilistic GANs, a generator is seen as being trained to produce contrastive samples with minimal energies, while the discriminator is trained to assign high energies to these generated samples. Viewing the discriminator as an energy function allows to use a wide variety of architectures and loss functionals in addition to the usual binary classifier with logistic output. Among them, we show one instantiation of EBGAN framework as using an auto-encoder architecture, with the energy being the reconstruction error, in place of the discriminator. We show that this form of EBGAN exhibits more stable behavior than regular GANs during training. We also show that a single-scale architecture can be trained to generate high-resolution images.
Year
Venue
DocType
2017
international conference on learning representations
Conference
Volume
Citations 
PageRank 
abs/1609.03126
168
5.51
References 
Authors
20
3
Search Limit
100168
Name
Order
Citations
PageRank
junbo zhao169827.58
Michaël Mathieu21915151.59
Yann LeCun3260903771.21