去渲染风格化文本

Wataru Shimoda, Daichi Haraguchi, S. Uchida, Kota Yamaguchi
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引用次数: 12

摘要

编辑栅格文本是一项有前途但具有挑战性的任务。我们建议将文本矢量化应用于显示媒体(如海报、网页或广告)中的光栅文本编辑任务。在我们的方法中,我们不是在栅格域中应用图像转换或生成,而是学习文本矢量化模型来解析所有渲染参数,包括文本,位置,大小,字体,样式,效果和隐藏背景,然后利用这些参数进行重建和任何编辑任务。我们的文本矢量化利用可微分文本渲染的优势,以无分辨率的参数格式精确地再现输入光栅文本。我们在实验中表明,我们的方法可以成功地解析统一模型中的文本、样式和背景信息,并且与栅格基线相比,产生无人工的文本编辑。
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De-rendering Stylized Texts
Editing raster text is a promising but challenging task. We propose to apply text vectorization for the task of raster text editing in display media, such as posters, web pages, or advertisements. In our approach, instead of applying image transformation or generation in the raster domain, we learn a text vectorization model to parse all the rendering parameters including text, location, size, font, style, effects, and hidden background, then utilize those parameters for reconstruction and any editing task. Our text vectorization takes advantage of differentiable text rendering to accurately reproduce the input raster text in a resolution-free parametric format. We show in the experiments that our approach can successfully parse text, styling, and background information in the unified model, and produces artifact-free text editing compared to a raster baseline.
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