用于自动动画着色的线条艺术相关匹配特征转移网络

Qian Zhang, Bo Wang, W. Wen, Hai Li, Junhui Liu
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引用次数: 0

摘要

动画线条艺术的自动着色是一个具有挑战性的计算机视觉问题,因为线条艺术的信息是高度稀疏和抽象的,并且对帧之间的颜色和风格的一致性有严格的要求。近年来,出现了许多基于生成对抗网络(GAN)的单线艺术着色的图像间翻译方法。他们可以在线条艺术图像的条件下产生感知上吸引人的结果。然而,由于缺乏对帧间一致性的考虑,这些方法不能用于动画着色。现有的方法只是简单地输入之前的彩色帧作为下一行图像上色的参考,这会导致上色过程中由于之前的彩色帧和下一行图像在空间上的错位而导致上色过程的误导,尤其是在发生明显变化的位置。为了解决这些问题,我们设计了一种相关匹配特征转移模型(CMFT),以可学习的方式对彩色参考特征进行对齐,并将该模型以粗到精的方式集成到基于U-Net的生成器中,使生成器能够将分层同步特征从深层语义代码逐步转移到内容中。可拓性评价表明,CMFT模型能有效地提高彩色帧的中间一致性和质量,特别是在运动激烈和多样的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Line Art Correlation Matching Feature Transfer Network for Automatic Animation Colorization
Automatic animation line art colorization is a challenging computer vision problem, since the information of the line art is highly sparse and abstracted and there exists a strict requirement for the color and style consistency between frames. Recently, a lot of Generative Adversarial Network (GAN) based image-to-image translation methods for single line art colorization have emerged. They can generate perceptually appealing results conditioned on line art images. However, these methods can not be adopted for the purpose of animation colorization because there is a lack of consideration of the in-between frame consistency. Existing methods simply input the previous colored frame as a reference to color the next line art, which will mislead the colorization due to the spatial misalignment of the previous colored frame and the next line art especially at positions where apparent changes happen. To address these challenges, we design a kind of correlation matching feature transfer model (called CMFT) to align the colored reference feature in a learnable way and integrate the model into an U-Net based generator in a coarse-to-fine manner This enables the generator to transfer the layer-wise synchronized features from the deep semantic code to the content progressively. Extension evaluation shows that CMFT model can effectively improve the in-between consistency and the quality of colored frames especially when the motion is intense and diverse.
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