Title
Perturbative GAN: GAN with Perturbation Layers.
Abstract
Perturbative GAN, which replaces convolution layers of existing convolutional GANs (DCGAN, WGAN-GP, BIGGAN, etc.) with perturbation layers that adds a fixed noise mask, is proposed. Compared with the convolu-tional GANs, the number of parameters to be trained is smaller, the convergence of training is faster, the incep-tion score of generated images is higher, and the overall training cost is reduced. Algorithmic generation of the noise masks is also proposed, with which the training, as well as the generation, can be boosted with hardware acceleration. Perturbative GAN is evaluated using con-ventional datasets (CIFAR10, LSUN, ImageNet), both in the cases when a perturbation layer is adopted only for Generators and when it is introduced to both Generator and Discriminator.
Year
Venue
DocType
2019
arXiv: Learning
Journal
Volume
Citations 
PageRank 
abs/1902.01514
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Yuma Kishi100.34
Tsutomu Ikegami231.08
Shin-ichi O'Uchi3105.92
Ryousei Takano45116.12
Wakana Nogami500.34
Tomohiro Kudoh634450.92