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Awesome Typography: Statistics-Based Text Effects Transfer

机译:很棒的版式:基于统计的文本效果传输

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In this work, we explore the problem of generating fantastic special-effects for the typography. It is quite challenging due to the model diversities to illustrate varied text effects for different characters. To address this issue, our key idea is to exploit the analytics on the high regularity of the spatial distribution for text effects to guide the synthesis process. Specifically, we characterize the stylized patches by their normalized positions and the optimal scales to depict their style elements. Our method first estimates these two features and derives their correlation statistically. They are then converted into soft constraints for texture transfer to accomplish adaptive multi-scale texture synthesis and to make style element distribution uniform. It allows our algorithm to produce artistic typography that fits for both local texture patterns and the global spatial distribution in the example. Experimental results demonstrate the superiority of our method for various text effects over conventional style transfer methods. In addition, we validate the effectiveness of our algorithm with extensive artistic typography library generation.
机译:在这项工作中,我们探讨了为版式生成奇妙的特殊效果的问题。由于模型的多样性说明了不同字符的不同文本效果,因此这是非常具有挑战性的。为了解决这个问题,我们的主要思想是利用对空间分布的高规律性的分析来获得文本效果,以指导合成过程。具体来说,我们通过标准化位置和最佳比例来描述风格化补丁,以描绘其样式元素。我们的方法首先估算这两个特征,然后统计得出它们的相关性。然后将它们转换为软约束以进行纹理传递,以完成自适应多尺度纹理合成,并使样式元素分布均匀。它允许我们的算法产生适合于示例中局部纹理图案和全局空间分布的艺术字体。实验结果表明,与传统样式转换方法相比,我们的方法在各种文本效果方面具有优势。此外,我们通过广泛的艺术字体库生成验证了我们算法的有效性。

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