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ArtFlow: Unbiased Image Style Transfer via Reversible Neural Flows

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Universal style transfer retains styles from reference images in content images. While existing methods have achieved state-of-the-art style transfer performance, they are not aware of the content leak phenomenon that the image content may corrupt after several rounds of stylization process. In this paper, we propose ArtFlow to prevent content leak during universal style transfer. ArtFlow consists of reversible neural flows and an unbiased feature transfer module. It supports both forward and backward inferences and operates in a projection-transfer-reversion scheme. The forward inference projects input images into deep features, while the backward inference remaps deep features back to input images in a lossless and unbiased way. Extensive experiments demonstrate that ArtFlow achieves comparable performance to state-of-the-art style transfer methods while avoiding content leak.

Jie An, Siyu Huang, Yibing Song, Dejing Dou, Wei Liu, Jiebo Luo• 2021

Related benchmarks

TaskDatasetResultRank
Style TransferMS-COCO (content) + WikiArt (style) (test)
LPIPS0.5671
31
Image Style TransferUser Study
Overall Quality Score27.6
30
Artistic Style TransferMS-COCO content images and WikiArt style images 512x512 resolution (test)
FID (Artistic Style)34.63
13
Arbitrary Image Style TransferWikiArt and Places365 (test)
Content Loss0.172
9
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