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Guiding InfoGAN with Semi-supervision

机译:带半监督的引导infogan

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In this paper we propose a new semi-supervised GAN architecture (ss-InfoGAN) for image synthesis that leverages information from few labels (as little as 0.22%, max. 10% of the dataset) to learn semantically meaningful and controllable data representations where latent variables correspond to label categories. The architecture builds on Information Maximizing Generative Adversarial Networks (InfoGAN) and is shown to learn both continuous and categorical codes and achieves higher quality of synthetic samples compared to fully unsupervised settings. Furthermore, we show that using small amounts of labeled data speeds-up training convergence. The architecture maintains the ability to disentangle latent variables for which no labels are available. Finally, we contribute an information-theoretic reasoning on how introducing semi-supervision increases mutual information between synthetic and real data.
机译:在本文中,我们提出了一种新的半监督GAN架构(SS-Infogan),用于图像合成,从而利用少数标签(几乎0.22%,最大10%的数据集)来学习语义有意义和可控的数据表示潜在变量对应于标签类别。该架构在最大化生成的对抗网络(Infogan)上建立了信息,并且被示出了与完全无监督的设置相比,以学习连续和分类代码并实现更高质量的合成样品。此外,我们展示了使用少量标记的数据速度训练收敛。该架构保持了解除不提供标签可用的潜在变量的能力。最后,我们有助于了解如何引入半监督如何增加合成和实际数据之间的相互信息的信息。

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