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SAFIN: Arbitrary Style Transfer with Self-Attentive Factorized Instance Normalization

IEEE International Conference on Multimedia and Expo(2021)

引用 12|浏览24
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摘要
Artistic style transfer aims to transfer the style characteristics of one image onto another image while retaining its content. Existing approaches commonly leverage various normalization techniques, although these face limitations in adequately transferring diverse textures to different spatial locations. Self-Attention-based approaches have tackled this issue with partial success but suffer from unwanted artifacts. Motivated by these observations, this paper aims to combine the best of both worlds: self-attention and normalization. That yields a new plug-and-play module that we name Self-Attentive Factorized Instance Normalization (SAFIN). SAFIN is essentially a spatially adaptive normalization module whose parameters are inferred through attention on the content and style image. We demonstrate that plugging SAFIN into the base network of another state-of-the-art method results in enhanced stylization. We also develop a novel base network composed of Wavelet Transform for multi-scale style transfer, which when combined with SAFIN, produces visually appealing results with lesser unwanted textures.
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关键词
normalization techniques,face limitations,diverse textures,different spatial locations,Self-Attention based approaches,partial success,unwanted artifacts,-play module,Instance Normalization,SAFIN,spatially-adaptive normalization module whose parameters,style image,novel base network,multiscale style transfer,lesser unwanted textures,arbitrary style transfer,artistic style transfer,style characteristics
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