Stylized Neural Painting

2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021(2021)

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摘要
This paper proposes an image-to-painting translation method that generates vivid and realistic painting artworks with controllable styles. Different from previous image-to-image translation methods that formulate the translation as pixel-wise prediction, we deal with such an artistic creation process in a vectorized environment and produce a sequence of physically meaningful stroke parameters that can be further used for rendering. Since a typical vector render is not differentiable, we design a novel neural renderer which imitates the behavior of the vector renderer and then frame the stroke prediction as a parameter searching process that maximizes the similarity between the input and the rendering output. We explored the zero-gradient problem on parameter searching and propose to solve this problem from an optimal transportation perspective. We also show that previous neural renderers have a parameter coupling problem and we re-design the rendering network with a rasterization network and a shading network that better handles the disentanglement of shape and color. Experiments show that the paintings generated by our method have a high degree of fidelity in both global appearance and local textures. Our method can be also jointly optimized with neural style transfer that further transfers visual style from other images.
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关键词
stylized neural,image-to-painting translation method,vivid painting artworks,realistic painting artworks,controllable styles,image-to-image translation methods,pixel-wise prediction,artistic creation process,vectorized environment,physically meaningful stroke parameters,typical vector render,novel neural renderer,vector renderer,stroke prediction,parameter searching process,rendering output,zero-gradient problem,optimal transportation perspective,previous neural renderers,parameter coupling problem,rendering network,rasterization network,shading network,paintings,neural style,transfers visual style
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