Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

LayerTracer: Cognitive-Aligned Layered SVG Synthesis via Diffusion Transformer

About

Generating cognitive-aligned layered SVGs remains challenging due to existing methods' tendencies toward either oversimplified single-layer outputs or optimization-induced shape redundancies. We propose LayerTracer, a diffusion transformer based framework that bridges this gap by learning designers' layered SVG creation processes from a novel dataset of sequential design operations. Our approach operates in two phases: First, a text-conditioned DiT generates multi-phase rasterized construction blueprints that simulate human design workflows. Second, layer-wise vectorization with path deduplication produces clean, editable SVGs. For image vectorization, we introduce a conditional diffusion mechanism that encodes reference images into latent tokens, guiding hierarchical reconstruction while preserving structural integrity. Extensive experiments demonstrate LayerTracer's superior performance against optimization-based and neural baselines in both generation quality and editability, effectively aligning AI-generated vectors with professional design cognition.

Yiren Song, Danze Chen, Mike Zheng Shou• 2025

Related benchmarks

TaskDatasetResultRank
SVG reconstruction30 real-world raster images
MSE0.0046
9
Showing 1 of 1 rows

Other info

Follow for update