Proposes generative guiding blocks with appearance-preserving and variation-transforming discriminators to enable realistic image synthesis under large change demands in generative models.
Generative Guiding Block: Synthesizing Realistic Looking Variants Capable of Even Large Change Demands
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abstract
Realistic image synthesis is to generate an image that is perceptually indistinguishable from an actual image. Generating realistic looking images with large variations (e.g., large spatial deformations and large pose change), however, is very challenging. Handing large variations as well as preserving appearance needs to be taken into account in the realistic looking image generation. In this paper, we propose a novel realistic looking image synthesis method, especially in large change demands. To do that, we devise generative guiding blocks. The proposed generative guiding block includes realistic appearance preserving discriminator and naturalistic variation transforming discriminator. By taking the proposed generative guiding blocks into generative model, the latent features at the layer of generative model are enhanced to synthesize both realistic looking- and target variation- image. With qualitative and quantitative evaluation in experiments, we demonstrated the effectiveness of the proposed generative guiding blocks, compared to the state-of-the-arts.
fields
cs.CV 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Generative Guiding Block: Synthesizing Realistic Looking Variants Capable of Even Large Change Demands
Proposes generative guiding blocks with appearance-preserving and variation-transforming discriminators to enable realistic image synthesis under large change demands in generative models.