Abstract

Digital cartoon production requires extensive manual labor to colorize sketches with visually pleasant color composition and color shading. During colorization, the artist usually takes an existing cartoon image as color guidance, particularly when colorizing related characters or an animation sequence. Reference-guided colorization is more intuitive than colorization with other hints, such as color points or scribbles, or text-based hints. Unfortunately, reference-guided colorization is challenging since the style of the colorized image should match the style of the reference image in terms of both global color composition and local color shading. In this paper, we propose a novel learning-based framework which colorizes a sketch based on a color style feature extracted from a reference color image. Our framework contains a color style extractor to extract the color feature from a color image, a colorization network to generate multi-scale output images by combining a sketch and a color feature, and a multi-scale discriminator to improve the reality of the output image. Extensive qualitative and quantitative evaluations show that our method outperforms existing methods, providing both superior visual quality and style reference consistency in the task of reference-based colorization.

Highlights

  • With the increasing popularity of digital cartoons, various computer-assisted technologies for producingManuscript received: 2021-01-21; accepted: 2021-03-18 them have rapidly been developed in recent years

  • We categorize our competitors into three major categories: image style transfer, style-content disentanglement, and conditional sketch colorization

  • To estimate the realism of our colorized outputs, we present a quantitative study by calculating the Frechet inception distance (FID) [47] between our colorization results and ground-truth color cartoons

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Summary

Introduction

With the increasing popularity of digital cartoons, various computer-assisted technologies for producingManuscript received: 2021-01-21; accepted: 2021-03-18 them have rapidly been developed in recent years. Since the sketch itself contains no hint about the colors to apply, existing methods either colorize the sketch by pure guesswork [1,2,3], which may lead to unnatural colors (see Fig. 1(b)), or by using user-provided hints, such as color points or scribbles [4, 5], or text hints [6]. Manually crafting color hints is timeconsuming, especially for line drawings with complex content. Crafting proper color hints is challenging, especially for amateur users, as it requires the user to apply a certain level of aesthetic judgement to generate a visually pleasant color cartoon. When coloring a cartoon animation, it would be extremely difficult for the user to achieve color consistency across frames when color hints are provided for each frame individually

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