GRIF-DM: Generation of Rich Impression Fonts using Diffusion Models
Lei Kang, Fei Yang, Kai Wang, Mohamed Ali Souibgui, Lluis Gomez,, Alicia Forn\'es, Ernest Valveny, Dimosthenis Karatzas

TL;DR
This paper presents GRIF-DM, a diffusion-based approach for generating expressive fonts from a single letter and impression keywords, using dual cross-attention modules to effectively combine letter and keyword features.
Contribution
Introduces a novel diffusion model with dual cross-attention modules for impression font generation, overcoming limitations of GAN-based methods in detail and keyword fusion.
Findings
Produces realistic, vibrant fonts aligned with user impressions
Outperforms existing GAN-based impression font techniques
Demonstrates high fidelity and diversity in generated fonts
Abstract
Fonts are integral to creative endeavors, design processes, and artistic productions. The appropriate selection of a font can significantly enhance artwork and endow advertisements with a higher level of expressivity. Despite the availability of numerous diverse font designs online, traditional retrieval-based methods for font selection are increasingly being supplanted by generation-based approaches. These newer methods offer enhanced flexibility, catering to specific user preferences and capturing unique stylistic impressions. However, current impression font techniques based on Generative Adversarial Networks (GANs) necessitate the utilization of multiple auxiliary losses to provide guidance during generation. Furthermore, these methods commonly employ weighted summation for the fusion of impression-related keywords. This leads to generic vectors with the addition of more impression…
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Taxonomy
TopicsWeb Data Mining and Analysis · Computer Graphics and Visualization Techniques · Power Systems and Technologies
MethodsSparse Evolutionary Training
