Efficient Subsampling for Generating High-Quality Images from Conditional Generative Adversarial Networks

03/20/2021
by   Xin Ding, et al.
3

Subsampling unconditional generative adversarial networks (GANs) to improve the overall image quality has been studied recently. However, these methods often require high training costs (e.g., storage space, parameter tuning) and may be inefficient or even inapplicable for subsampling conditional GANs, such as class-conditional GANs and continuous conditional GANs (CcGANs), when the condition has many distinct values. In this paper, we propose an efficient method called conditional density ratio estimation in feature space with conditional Softplus loss (cDRE-F-cSP). With cDRE-F-cSP, we estimate an image's conditional density ratio based on a novel conditional Softplus (cSP) loss in the feature space learned by a specially designed ResNet-34 or sparse autoencoder. We then derive the error bound of a conditional density ratio model trained with the proposed cSP loss. Finally, we propose a rejection sampling scheme, termed cDRE-F-cSP+RS, which can subsample both class-conditional GANs and CcGANs efficiently. An extra filtering scheme is also developed for CcGANs to increase the label consistency. Experiments on CIFAR-10 and Tiny-ImageNet datasets show that cDRE-F-cSP+RS can substantially improve the Intra-FID and FID scores of BigGAN. Experiments on RC-49 and UTKFace datasets demonstrate that cDRE-F-cSP+RS also improves Intra-FID, Diversity, and Label Score of CcGANs. Moreover, to show the high efficiency of cDRE-F-cSP+RS, we compare it with the state-of-the-art unconditional subsampling method (i.e., DRE-F-SP+RS). With comparable or even better performance, cDRE-F-cSP+RS only requires about 10% and 1.7% of the training costs spent respectively on CIFAR-10 and UTKFace by DRE-F-SP+RS.

READ FULL TEXT

page 15

page 16

page 18

page 19

page 22

page 23

research
09/24/2019

Subsampling Generative Adversarial Networks: Density Ratio Estimation in Feature Space with Softplus Loss

Filtering out unrealistic images from trained generative adversarial net...
research
12/03/2017

Towards Quality Advancement of Underwater Machine Vision with Generative Adversarial Networks

Underwater machine vision attracts more attention, but the terrible qual...
research
12/03/2017

Towards Qualitative Advancement of Underwater Machine Vision with Generative Adversarial Networks

Underwater machine vision attracts more attention, but the terrible qual...
research
02/11/2020

Improved Consistency Regularization for GANs

Recent work has increased the performance of Generative Adversarial Netw...
research
03/09/2023

Intriguing Property of GAN for Remote Sensing Image Generation

Generative adversarial networks (GANs) have achieved remarkable progress...
research
11/15/2020

CcGAN: Continuous Conditional Generative Adversarial Networks for Image Generation

This work proposes the continuous conditional generative adversarial net...
research
11/15/2019

Towards Design Methodology of Efficient Fast Algorithms for Accelerating Generative Adversarial Networks on FPGAs

Generative adversarial networks (GANs) have shown excellent performance ...

Please sign up or login with your details

Forgot password? Click here to reset