An Empirical Study of the Effects of Sample-Mixing Methods for Efficient Training of Generative Adversarial Networks

04/08/2021
by   Makoto Takamoto, et al.
0

It is well-known that training of generative adversarial networks (GANs) requires huge iterations before the generator's providing good-quality samples. Although there are several studies to tackle this problem, there is still no universal solution. In this paper, we investigated the effect of sample mixing methods, that is, Mixup, CutMix, and newly proposed Smoothed Regional Mix (SRMix), to alleviate this problem. The sample-mixing methods are known to enhance the accuracy and robustness in the wide range of classification problems, and can naturally be applicable to GANs because the role of the discriminator can be interpreted as the classification between real and fake samples. We also proposed a new formalism applying the sample-mixing methods to GANs with the saturated losses which do not have a clear "label" of real and fake. We performed a vast amount of numerical experiments using LSUN and CelebA datasets. The results showed that Mixup and SRMix improved the quality of the generated images in terms of FID in most cases, in particular, SRMix showed the best improvement in most cases. Our analysis indicates that the mixed-samples can provide different properties from the vanilla fake samples, and the mixing pattern strongly affects the decision of the discriminators. The generated images of Mixup have good high-level feature but low-level feature is not so impressible. On the other hand, CutMix showed the opposite tendency. Our SRMix showed the middle tendency, that is, showed good high and low level features. We believe that our finding provides a new perspective to accelerate the GANs convergence and improve the quality of generated samples.

READ FULL TEXT

page 5

page 6

page 7

research
12/28/2019

Alleviation for Gradient Exploding in GANs: Fake Can Be Real

In order to alleviate the notorious mode collapse phenomenon in generati...
research
11/28/2019

Quality analysis of DCGAN-generated mammography lesions

Medical image synthesis has gained a great focus recently, especially af...
research
12/20/2019

Bridging adversarial samples and adversarial networks

Generative adversarial networks have achieved remarkable performance on ...
research
08/20/2023

Turning Waste into Wealth: Leveraging Low-Quality Samples for Enhancing Continuous Conditional Generative Adversarial Networks

Continuous Conditional Generative Adversarial Networks (CcGANs) enable g...
research
03/28/2017

Semi and Weakly Supervised Semantic Segmentation Using Generative Adversarial Network

Semantic segmentation has been a long standing challenging task in compu...
research
01/10/2020

microbatchGAN: Stimulating Diversity with Multi-Adversarial Discrimination

We propose to tackle the mode collapse problem in generative adversarial...
research
04/24/2023

ComGAN: Toward GANs Exploiting Multiple Samples

In this paper, we propose ComGAN(ComparativeGAN) which allows the genera...

Please sign up or login with your details

Forgot password? Click here to reset