Semantic Pyramid for Image Generation

CVPR(2020)

引用 54|浏览345
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摘要
We present a novel GAN-based model that utilizes the space of deep features learned by a pre-trained classification model. Inspired by classical image pyramid representations, we construct our model as a Semantic Generation Pyramid -- a hierarchical framework which leverages the continuum of semantic information encapsulated in such deep features; this ranges from low level information contained in fine features to high level, semantic information contained in deeper features. More specifically, given a set of features extracted from a reference image, our model generates diverse image samples, each with matching features at each semantic level of the classification model. We demonstrate that our model results in a versatile and flexible framework that can be used in various classic and novel image generation tasks. These include: generating images with a controllable extent of semantic similarity to a reference image, and different manipulation tasks such as semantically-controlled inpainting and compositing; all achieved with the same model, with no further training.
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关键词
Semantic Pyramid,image generation,novel GAN-based model,deep features,pre-trained classification model,classical image pyramid representations,hierarchical framework,semantic information,low level information,fine features,deeper features,reference image,diverse image samples,matching features,semantic level,versatile framework,flexible framework,semantic similarity,semantically-controlled inpainting,compositing,semantic generation pyramid
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