基于gan的文本效果风格迁移研究

Yinquan Liu, Zhuang Chen
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引用次数: 0

摘要

随着神经风格迁移和生成对抗网络的发展,文本效应风格迁移的研究应运而生。文本效果风格转换的目的是用样式图像渲染文本图像,产生文本效果图像。然而,对于更复杂的文本,现有的方法将产生无法识别的字体图像。因此,我们提出在字形变换中加入形态学方法来限制字形变换的程度,在纹理网络训练时加入距离变换损失来限制纹理转移,从而提高整体变换效果。实验表明,与其他现有技术相比,本文提出的方法更适合于复杂象形图像的风格化。
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Research on GAN-based Text Effects Style Transfer
With the development of neural style transfer and generative adversarial network, the research of text effect style transfer has appeared. The text effect style transfer aims to render text images with style images to produce text effects images. However, for more complex text, the existing methods will generate unrecognizable font images. Therefore, we propose to add morphological methods to the glyph transformation to limit the degree of glyph transformation, and add distance transformation loss when training the texture network to limit the texture transfer, so as to improve the overall transformation effect. Experiments show that, compared with other existing technologies, our proposed method is more suitable for stylizing complex glyph images.
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