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DualVector: Unsupervised Vector Font Synthesis with Dual-Part Representation

Ying-Tian Liu, Zhifei Zhang, Yuan-Chen Guo, Matthew Fisher, Zhaowen Wang, Song–Hai Zhang

202316 citationsDOI

Abstract

Automatic generation of fonts can be an important aid to typeface design. Many current approaches regard glyphs as pixelated images, which present artifacts when scaling and inevitable quality losses after vectorization. On the other hand, existing vector font synthesis methods either fail to represent the shape concisely or require vector supervision during training. To push the quality of vector font synthesis to the next level, we propose a novel dual-part representation for vector glyphs, where each glyph is modeled as a collection of closed “positive” and “negative” path pairs. The glyph contour is then obtained by boolean operations on these paths. We first learn such a representation only from glyph images and devise a subsequent contour refinement step to align the contour with an image representation to further enhance details. Our method, named DualVector, outperforms state-of-the-art methods in vector font synthesis both quantitatively and qualitatively. Our synthesized vector fonts can be easily converted to common digital font formats like TrueType Font for practical use. The code is released at https://github.com/thuliu-yt16/dualvector.

Topics & Concepts

FontComputer scienceGlyph (data visualization)TypefaceArtificial intelligenceRepresentation (politics)Vectorization (mathematics)Vector graphicsComputer visionDual (grammatical number)Computer graphics (images)Pattern recognition (psychology)VisualizationComputer graphicsPolitical scienceArtOperating systemParallel computingPoliticsLawLiteratureComputer Graphics and Visualization Techniques3D Shape Modeling and AnalysisImage Processing and 3D Reconstruction
DualVector: Unsupervised Vector Font Synthesis with Dual-Part Representation | Litcius