On Applications of GANs and Their Latent Representations
2018-07-09
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On Applications of GANs and Their Latent Representations
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2018-07-09
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This report describes various applications of Generative Adversarial Networks
(GANs) for image generation, image-to-image translation, and vehicle control.
With this, we also investigate the role played by the computed latent space, and
show various ways of exploiting this space for controlled image generation and
exploration. We show one pure generative method which we call AstroGAN that is
able to generate realistic images of galaxies from a set of galaxy morphologies. Two
image-to-image translation methods are also displayed: StereoGAN, which is able
to generate a pair of stereo images given a single image; Underwater GAN, which
is able to restore distorted imagery exhibited in underwater environments. Lastly,
we show a generative model for generating actions in a simulated self-driving car
environment.
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Technical Report; 18-012
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Fabbri, Cameron; Sattar, Junaed. (2018). On Applications of GANs and Their Latent Representations. Retrieved from the University Digital Conservancy, https://hdl.handle.net/11299/216028.
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