Resolution Dependant GAN Interpolation for Controllable Image Synthesis Between Domains

10/11/2020
by   Justin N. M. Pinkney, et al.
10

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 dependant 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.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset