22/11/2021

ExSinGAN: Learning an Explainable Generative Model from a Single Image

Zicheng Zhang, Congying Han, Tiande Guo

Keywords: single image generation, single image generative model, generative adversarial network, image synthesis

Abstract: Generating images from a single sample has attracted extensive attention recently. In this paper, we formulate this problem as sampling from the conditional distribution of a single image, and propose a hierarchical framework that simplifies the learning of the intricate conditional distributions through the successive learning of the distributions about structure, semantics and texture, making the process of learning and generation comprehensible. We design ExSinGAN composed of three cascaded GANs for learning an explainable generative model from a given image, where the cascaded GANs model the distributions about structure, semantics and texture successively. ExSinGAN is learned not only from the internal patches of the given image as the previous works did, but also from the external prior obtained by the GAN inversion technique. Benefiting from the appropriate combination of internal and external information, ExSinGAN has a more powerful capability of generation and competitive generalization ability for the image manipulation tasks compared with prior works.

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