Multiple Heads are Better than One: Few-shot Font Generation with Multiple Localized Experts
Song Park, Sanghyuk Chun, Junbum Cha, Bado Lee, Hyunjung Shim

TL;DR
This paper introduces MX-Font, a novel few-shot font generation method that uses multiple experts to automatically capture diverse local styles and generalize to unseen languages, outperforming previous methods.
Contribution
MX-Font employs multiple experts for local style representation without explicit labels, enhancing diversity and generalization in few-shot font generation.
Findings
Outperforms state-of-the-art in Chinese font generation
Effective cross-lingual font generation demonstrated
Utilizes graph matching for expert specialization
Abstract
A few-shot font generation (FFG) method has to satisfy two objectives: the generated images should preserve the underlying global structure of the target character and present the diverse local reference style. Existing FFG methods aim to disentangle content and style either by extracting a universal representation style or extracting multiple component-wise style representations. However, previous methods either fail to capture diverse local styles or cannot be generalized to a character with unseen components, e.g., unseen language systems. To mitigate the issues, we propose a novel FFG method, named Multiple Localized Experts Few-shot Font Generation Network (MX-Font). MX-Font extracts multiple style features not explicitly conditioned on component labels, but automatically by multiple experts to represent different local concepts, e.g., left-side sub-glyph. Owing to the multiple…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Video Analysis and Summarization · Handwritten Text Recognition Techniques
