TL;DR
This paper investigates whether purely synthetic layered data can enhance graphic design decomposition, demonstrating that synthetic data can outperform real datasets and improve scalability and control in layered design tasks.
Contribution
The study introduces SynLayers, a synthetic dataset for layered design, showing its effectiveness and scalability compared to real datasets in graphic decomposition.
Findings
Synthetic data can outperform real datasets like PrismLayersPro.
Performance improves with data scale up to around 50K samples.
Synthetic data allows balanced control over layer-count distributions.
Abstract
Recent advances in image generation have made it easy to produce high-quality images. However, these outputs are inherently flattened, entangling foreground elements, background, and text within a fixed canvas. As a result, flexible post-generation editing remains challenging, revealing a clear last-mile gap toward practical usability. Existing approaches either rely on scarce proprietary layered assets or construct partially synthetic data from limited structural priors. However, both strategies face fundamental challenges in scalability. In this work, we investigate whether pure synthetic layered data can improve graphic design decomposition. We make the assumption that, in graphic design, effective decomposition does not require modeling inter-layer dependencies as precisely as in natural-image composition, since design elements are often intentionally arranged as modular and…
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