Rethinking Layered Graphic Design Generation with a Top-Down Approach
Jingye Chen, Zhaowen Wang, Nanxuan Zhao, Li Zhang, Difan Liu, Jimei Yang, Qifeng Chen

TL;DR
This paper introduces Accordion, a top-down framework that converts AI-generated graphic designs into editable layered formats, improving design refinement and variation using vision language models and curated prompts.
Contribution
It is the first to adopt a top-down approach guided by reference images for layered graphic design generation, contrasting with existing bottom-up methods.
Findings
Accordion produces high-quality, editable layered designs.
The method outperforms existing approaches on the DesignIntention benchmark.
User studies confirm the effectiveness of Accordion in design tasks.
Abstract
Graphic design is crucial for conveying ideas and messages. Designers usually organize their work into objects, backgrounds, and vectorized text layers to simplify editing. However, this workflow demands considerable expertise. With the rise of GenAI methods, an endless supply of high-quality graphic designs in pixel format has become more accessible, though these designs often lack editability. Despite this, non-layered designs still inspire human designers, influencing their choices in layouts and text styles, ultimately guiding the creation of layered designs. Motivated by this observation, we propose Accordion, a graphic design generation framework taking the first attempt to convert AI-generated designs into editable layered designs, meanwhile refining nonsensical AI-generated text with meaningful alternatives guided by user prompts. It is built around a vision language model (VLM)…
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Taxonomy
TopicsInteractive and Immersive Displays · Data Visualization and Analytics · Computer Graphics and Visualization Techniques
MethodsAccordion · Segment Anything Model · Inpainting
