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Uncertainty Principles of Encoding GANs

Author Affiliations
University of Science and Technology Chittagong, Peking University, Beijing Institute of Technology, Alibaba Group (United States), ...
Published InRare & Special e-Zone (The Hong Kong University of Science and Technology)
Year2021
Citations1

Abstract

The compelling synthesis results of Generative Adversarial Networks (GANs) demonstrate rich semantic knowledge in their latent codes. To obtain this knowledge for downstream applications, encoding GANs has been proposed to learn encoders, such that real world data can be encoded to latent codes, which can be fed to generators to reconstruct those data. However, despite the theoretical guarantees of precise reconstruction in previous works, current algorithms generally reconstruct inputs with non-negligible deviations from inputs. In this paper we study this predicament of encoding GANs, which is indispensable research for the GAN community. We prove three uncertainty principles of encoding GANs in practice: a) the 'perfect' encoder and generator cannot be continuous at the same time, which implies that current framework…
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