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Papers/Lessons Learned from the Training of GANs on Artificial Da...

Lessons Learned from the Training of GANs on Artificial Datasets

Shichang Tang

2020-07-13AttributeImage GenerationConditional Image Generation
PaperPDFCode(official)

Abstract

Generative Adversarial Networks (GANs) have made great progress in synthesizing realistic images in recent years. However, they are often trained on image datasets with either too few samples or too many classes belonging to different data distributions. Consequently, GANs are prone to underfitting or overfitting, making the analysis of them difficult and constrained. Therefore, in order to conduct a thorough study on GANs while obviating unnecessary interferences introduced by the datasets, we train them on artificial datasets where there are infinitely many samples and the real data distributions are simple, high-dimensional and have structured manifolds. Moreover, the generators are designed such that optimal sets of parameters exist. Empirically, we find that under various distance measures, the generator fails to learn such parameters with the GAN training procedure. We also find that training mixtures of GANs leads to more performance gain compared to increasing the network depth or width when the model complexity is high enough. Our experimental results demonstrate that a mixture of generators can discover different modes or different classes automatically in an unsupervised setting, which we attribute to the distribution of the generation and discrimination tasks across multiple generators and discriminators. As an example of the generalizability of our conclusions to realistic datasets, we train a mixture of GANs on the CIFAR-10 dataset and our method significantly outperforms the state-of-the-art in terms of popular metrics, i.e., Inception Score (IS) and Fr\'echet Inception Distance (FID).

Results

TaskDatasetMetricValueModel
Image GenerationCIFAR-10FID8.17MIX-BigGAN
Image GenerationCIFAR-10FID3.6MIX-MHingeGAN
Image GenerationCIFAR-10Inception score10.21MIX-MHingeGAN
Conditional Image GenerationCIFAR-10FID3.6MIX-MHingeGAN
Conditional Image GenerationCIFAR-10Inception score10.21MIX-MHingeGAN

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