Conditional Image Synthesis with Auxiliary Classifier GANs: Difference between revisions
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= Critique = | = Critique = | ||
=== Model === | |||
Not very different from other GANs. Some unsupported claims about stabilizing training etc. | |||
=== Metrics === | |||
=== Experiments === | |||
Discussion of overfitting says b/c nearest neighbours under L1 measure in pixel space are not similar looking it doesn't overfit. | |||
= References = | = References = | ||
1. Odena, A., Olah, C., & Shlens, J. (2016). Conditional image synthesis with auxiliary classifier gans. arXiv preprint [http://proceedings.mlr.press/v70/odena17a.html arXiv:1610.09585]. | 1. Odena, A., Olah, C., & Shlens, J. (2016). Conditional image synthesis with auxiliary classifier gans. arXiv preprint [http://proceedings.mlr.press/v70/odena17a.html arXiv:1610.09585]. |
Revision as of 14:00, 9 November 2017
Abstract: "In this paper we introduce new methods for the improved training of generative adversarial networks (GANs) for image synthesis. We construct a variant of GANs employing label conditioning that results in 128×128 resolution image samples exhibiting global coherence. We expand on previous work for image quality assessment to provide two new analyses for assessing the discriminability and diversity of samples from class-conditional image synthesis models. These analyses demonstrate that high resolution samples provide class information not present in low resolution samples. Across 1000 ImageNet classes, 128×128 samples are more than twice as discriminable as artificially resized 32×32 samples. In addition, 84.7% of the classes have samples exhibiting diversity comparable to real ImageNet data." Odena et al., 2016
Introduction
Motivation
Previous Work
Common methods for image synthesis used today are
Contributions
Model
The authors propose a conditional GAN that both takes the class to be synthesized as input to the, and includes a classification accuracy term in the loss function of the discriminator.
Measurement Methods
The authors propose two measurement methods to assess the discriminability and diversity of the generated images.
Experimental Results on Image Resolution
Results
Critique
Model
Not very different from other GANs. Some unsupported claims about stabilizing training etc.
Metrics
Experiments
Discussion of overfitting says b/c nearest neighbours under L1 measure in pixel space are not similar looking it doesn't overfit.
References
1. Odena, A., Olah, C., & Shlens, J. (2016). Conditional image synthesis with auxiliary classifier gans. arXiv preprint arXiv:1610.09585.