Non-Parametric Priors For Generative Adversarial Networks
International Conference on Machine Learning (2019) The advent of generative adversarial networks (GAN) has enabled new capabilities in synthesis, interpolation, and data augmentation heretofore considered very challenging. However, one of the common assumptions in most GAN architectures is the assu...
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Zusammenfassung: | International Conference on Machine Learning (2019) The advent of generative adversarial networks (GAN) has enabled new
capabilities in synthesis, interpolation, and data augmentation heretofore
considered very challenging. However, one of the common assumptions in most GAN
architectures is the assumption of simple parametric latent-space
distributions. While easy to implement, a simple latent-space distribution can
be problematic for uses such as interpolation. This is due to distributional
mismatches when samples are interpolated in the latent space. We present a
straightforward formalization of this problem; using basic results from
probability theory and off-the-shelf-optimization tools, we develop ways to
arrive at appropriate non-parametric priors. The obtained prior exhibits
unusual qualitative properties in terms of its shape, and quantitative benefits
in terms of lower divergence with its mid-point distribution. We demonstrate
that our designed prior helps improve image generation along any Euclidean
straight line during interpolation, both qualitatively and quantitatively,
without any additional training or architectural modifications. The proposed
formulation is quite flexible, paving the way to impose newer constraints on
the latent-space statistics. |
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DOI: | 10.48550/arxiv.1905.07061 |