Resolution Dependent GAN Interpolation for Controllable Image Synthesis Between Domains
GANs can generate photo-realistic images from the domain of their training data. However, those wanting to use them for creative purposes often want to generate imagery from a truly novel domain, a task which GANs are inherently unable to do. It is also desirable to have a level of control so that t...
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Zusammenfassung: | GANs can generate photo-realistic images from the domain of their training
data. However, those wanting to use them for creative purposes often want to
generate imagery from a truly novel domain, a task which GANs are inherently
unable to do. It is also desirable to have a level of control so that there is
a degree of artistic direction rather than purely curation of random results.
Here we present a method for interpolating between generative models of the
StyleGAN architecture in a resolution dependent manner. This allows us to
generate images from an entirely novel domain and do this with a degree of
control over the nature of the output. |
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DOI: | 10.48550/arxiv.2010.05334 |