Generative Adversarial Networks with Inverse Transformation Unit

27 Sep 2017 Zhifeng Kong Shuo Ding

In this paper we introduce a new structure to Generative Adversarial Networks by adding an inverse transformation unit behind the generator. We present two theorems to claim the convergence of the model, and two conjectures to nonideal situations when the transformation is not bijection... (read more)

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