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Main Authors: Chen, Weidong, Hong, Dexiang, Mao, Zhendong, Cheng, Yutao, Liu, Xinyan, Zhang, Lei, Zhang, Yongdong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.19632
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author Chen, Weidong
Hong, Dexiang
Mao, Zhendong
Cheng, Yutao
Liu, Xinyan
Zhang, Lei
Zhang, Yongdong
author_facet Chen, Weidong
Hong, Dexiang
Mao, Zhendong
Cheng, Yutao
Liu, Xinyan
Zhang, Lei
Zhang, Yongdong
contents Graphic design images consist of multiple editable layers, such as text, background, and decorative elements, while most generative models produce rasterized outputs without explicit layer structures, limiting downstream editing. Existing graphic design parsing methods typically rely on multi-stage pipelines combining layout prediction, matting, and inpainting, which suffer from error accumulation and limited controllability. We propose a hybrid generative framework for raster-to-layer graphic design parsing that decomposes a design image into editable text, background, and sticker layers. Text regions are parsed using a vision-language model into a text rendering protocol, enabling faithful reconstruction and flexible re-editing, while background and sticker layers are generated using a multi-branch diffusion architecture with RGBA support. We further introduce ParserReward and integrate it with Group Relative Policy Optimization to align generation quality with human design preferences. Extensive experiments on two challenging datasets, \emph{i.e.,} the Parser-40K and Crello datasets, demonstrate superior performance over existing methods, \emph{eg.,} achieving an overall average improvement of 23.7\% across all metrics.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19632
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CreatiParser: Generative Image Parsing of Raster Graphic Designs into Editable Layers
Chen, Weidong
Hong, Dexiang
Mao, Zhendong
Cheng, Yutao
Liu, Xinyan
Zhang, Lei
Zhang, Yongdong
Computer Vision and Pattern Recognition
Graphic design images consist of multiple editable layers, such as text, background, and decorative elements, while most generative models produce rasterized outputs without explicit layer structures, limiting downstream editing. Existing graphic design parsing methods typically rely on multi-stage pipelines combining layout prediction, matting, and inpainting, which suffer from error accumulation and limited controllability. We propose a hybrid generative framework for raster-to-layer graphic design parsing that decomposes a design image into editable text, background, and sticker layers. Text regions are parsed using a vision-language model into a text rendering protocol, enabling faithful reconstruction and flexible re-editing, while background and sticker layers are generated using a multi-branch diffusion architecture with RGBA support. We further introduce ParserReward and integrate it with Group Relative Policy Optimization to align generation quality with human design preferences. Extensive experiments on two challenging datasets, \emph{i.e.,} the Parser-40K and Crello datasets, demonstrate superior performance over existing methods, \emph{eg.,} achieving an overall average improvement of 23.7\% across all metrics.
title CreatiParser: Generative Image Parsing of Raster Graphic Designs into Editable Layers
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.19632