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Deep Preset: Blending and Retouching Photos with Color Style Transfer

About

End-users, without knowledge in photography, desire to beautify their photos to have a similar color style as a well-retouched reference. However, the definition of style in recent image style transfer works is inappropriate. They usually synthesize undesirable results due to transferring exact colors to the wrong destination. It becomes even worse in sensitive cases such as portraits. In this work, we concentrate on learning low-level image transformation, especially color-shifting methods, rather than mixing contextual features, then present a novel scheme to train color style transfer with ground-truth. Furthermore, we propose a color style transfer named Deep Preset. It is designed to 1) generalize the features representing the color transformation from content with natural colors to retouched reference, then blend it into the contextual features of content, 2) predict hyper-parameters (settings or preset) of the applied low-level color transformation methods, 3) stylize content to have a similar color style as reference. We script Lightroom, a powerful tool in editing photos, to generate 600,000 training samples using 1,200 images from the Flick2K dataset and 500 user-generated presets with 69 settings. Experimental results show that our Deep Preset outperforms the previous works in color style transfer quantitatively and qualitatively.

Man M. Ho, Jinjia Zhou• 2020

Related benchmarks

TaskDatasetResultRank
Image Color Style TransferLuan et al. (test)
CPU Inference Time (s)14.354
15
Color Style Transfer20 image sets (val)
Average Ranking5.3
7
Color Style TransferFHD 1920 x 1080
Inference Time (s)0.344
6
Color Style Transfer2K 2560 x 1440
Inference Time0.459
5
Color Style Transfer4K (3840 x 2160)
Inference Time (s)1.128
3
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