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首页> 外文期刊>International Journal of Performability Engineering >Colorization for Anime Sketches with Cycle-Consistent Adversarial Network
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Colorization for Anime Sketches with Cycle-Consistent Adversarial Network

机译:具有循环一致的对冲网络的动漫草图的彩色

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摘要

Coloring animation sketches has always been a complex and interesting task, but as the sketch is the first part of animation creation that neither presents gray value nor presents semantic information, the lack of real animation sketches is the biggest difficulty in current model training. It is also usually expensive to collect such data. In recent years, some methods based on generative adversarial networks (GANs) have achieved great success. They can generate colorized anime illustration on given sketches. Many existing sketch coloring tools are based on this supervised learning method, but the marking of data is particularly important for supervised learning, and much time is spent on the marking of data. To address these challenges, we propose a novel approach for unsupervised learning based on U-net and periodic consistent confrontation. Specifically, we combine the periodic consistent antagonism framework with the U-net structure and residual network, enabling us to robustly train a deep network to make the resulting images more natural and realistic. We also adopted some special data generation methods, so that our model can not only color anime sketches but also extract line drafts from colored pictures. By comparing the mainstream models of supervised learning, we show that the image processed by the proposed method can achieve a similar effect.
机译:着色动画素描始终是一个复杂而有趣的任务,但由于草图是动画创建的第一部分,既不呈现灰色值也没有提出语义信息,缺乏真正的动画草图是当前模型训练中最大的困难。收集此类数据通常也是昂贵的。近年来,一些基于生成的对抗性网络(GANS)的方法取得了巨大的成功。它们可以在给定的草图上生成着色的动漫插图。许多现有的草图着色工具基于此监督的学习方法,但数据的标记对于监督学习尤为重要,并且花费了很多时间在数据的标记上。为了解决这些挑战,我们提出了一种基于U-Net和定期对抗的无监督学习的新方法。具体而言,我们将周期性一致的拮抗框架与U-Net结构和剩余网络相结合,使我们能够强大地训练深度网络,以使所得到的图像更加自然和现实。我们还采用了一些特殊的数据生成方法,使我们的模型不仅可以彩色动漫草图,还可以从彩色图片中提取线条草稿。通过比较监督学习的主流模型,我们表明由所提出的方法处理的图像可以实现类似的效果。

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