论文标题

生成对抗网络上的潜在空间调理

Latent Space Conditioning on Generative Adversarial Networks

论文作者

Durall, Ricard, Ho, Kalun, Pfreundt, Franz-Josef, Keuper, Janis

论文摘要

生成对抗网络是学习合成图像产生的最先进的方法。尽管早期的成功大部分是无监督的,但有点略微,但基于标记数据的方法已经取代了这种趋势。这些监督的方法允许对输出图像进行更细粒度的控制,从而提供更大的灵活性和稳定性。然而,这种模型的主要缺点是注释数据的必要性。在这项工作中,我们介绍了一个新颖的框架,该框架从两种流行的学习技术,对抗性培训和代表性学习中受益,并迈出了无监督的条件gan。特别是,我们的方法利用了潜在空间的结构(通过表示学习),并采用它来调节生成模型。这样,我们打破了条件和标签之间的传统依赖性,用潜在空间的无监督特征代替后者。最后,我们表明,这种新技术能够按需生产样品,以保持其监督对应物的质量。

Generative adversarial networks are the state of the art approach towards learned synthetic image generation. Although early successes were mostly unsupervised, bit by bit, this trend has been superseded by approaches based on labelled data. These supervised methods allow a much finer-grained control of the output image, offering more flexibility and stability. Nevertheless, the main drawback of such models is the necessity of annotated data. In this work, we introduce an novel framework that benefits from two popular learning techniques, adversarial training and representation learning, and takes a step towards unsupervised conditional GANs. In particular, our approach exploits the structure of a latent space (learned by the representation learning) and employs it to condition the generative model. In this way, we break the traditional dependency between condition and label, substituting the latter by unsupervised features coming from the latent space. Finally, we show that this new technique is able to produce samples on demand keeping the quality of its supervised counterpart.

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