Into the Colorful World of Webtoons: Through the Lens of Neural Networks

Ceyda Cinarel, Byoung-Tak Zhang
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引用次数: 3

Abstract

The task of colorizing black and white images has previously been explored for natural images. In this paper we look at the task of colorization on a different domain: webtoons. To our knowledge this type of dataset hasn't been used before. Webtoons are usually produced in color thus they make a good dataset for analyzing different colorization models. Comics like webtoons also present some additional challenges over natural images, such as occlusion by speech bubbles and text. First we look at some of the previously introduced models' performance on this task and suggest modifications to address their problems. We propose a new model composed of two networks; one network generates sparse color information and a second network uses this generated color information as input to apply color to the whole image. These two networks are trained end-to-end. Our proposed model solves some of the problems observed with other architectures, resulting in better colorizations.
走进网络漫画的多彩世界:通过神经网络的镜头
对黑白图像上色的任务以前已经被用于自然图像的探索。在这篇文章中,我们着眼于一个不同领域的着色任务:网络漫画。据我们所知,这种类型的数据集以前从未被使用过。网络漫画通常是彩色的,因此它们是分析不同着色模型的一个很好的数据集。像网络漫画这样的漫画也比自然图像提出了一些额外的挑战,比如被语音气泡和文本遮挡。首先,我们看一下前面介绍的模型在此任务中的一些性能,并提出修改建议以解决它们的问题。我们提出了一个由两个网络组成的新模型;一个网络生成稀疏的颜色信息,另一个网络使用这个生成的颜色信息作为输入,为整个图像应用颜色。这两个网络是端到端的训练。我们提出的模型解决了在其他体系结构中观察到的一些问题,从而产生更好的着色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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