SVGen: Interpretable Vector Graphics Generation with Large Language Models
SVGen: Interpretable Vector Graphics Generation with Large Language Models
Scalable Vector Graphics (SVG) is widely used in front-end development and UI/UX design due to its scalability, editability, and rendering efficiency. However, turning creative ideas into precise vector graphics remains a time-consuming challenge. To address this, we introduce SVG-1M, a large-scale dataset of high-quality SVGs paired with natural language descriptions. Through advanced data augmentation and annotation, we create well-aligned Text to SVG training pairs, including a subset with Chain of Thought annotations for enhanced semantic guidance. Based on this dataset, we propose SVGen, an end-to-end model that generates SVG code from natural language inputs. Our approach ensures semantic accuracy and structural completeness, supported by curriculum learning and reinforcement learning optimization. Experiments show that SVGen outperforms general large models and traditional rendering methods in both effectiveness and efficiency. Code, model, and dataset are available on GitHub.
Xuelong Li、Feiyu Wang、Zhiyuan Zhao、Yuandong Liu、Da Zhang、Junyu Gao、Hao Sun
计算技术、计算机技术
Xuelong Li,Feiyu Wang,Zhiyuan Zhao,Yuandong Liu,Da Zhang,Junyu Gao,Hao Sun.SVGen: Interpretable Vector Graphics Generation with Large Language Models[EB/OL].(2025-08-06)[2025-08-24].https://arxiv.org/abs/2508.09168.点此复制
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