AI Agents 相关度: 8/10

AutoFigure: Generating and Refining Publication-Ready Scientific Illustrations

Minjun Zhu, Zhen Lin, Yixuan Weng, Panzhong Lu, Qiujie Xie, Yifan Wei, Sifan Liu, Qiyao Sun, Yue Zhang
arXiv: 2602.03828v1 发布: 2026-02-03 更新: 2026-02-03

AI 摘要

AutoFigure提出一个自动生成高质量科学插图的Agent框架,并构建了大规模基准数据集FigureBench。

主要贡献

  • 构建了大规模科学插图基准数据集FigureBench
  • 提出了Agentic框架AutoFigure,用于自动生成科学插图
  • AutoFigure通过思考、重组和验证,生成结构完整和美观的插图

方法论

AutoFigure采用Agent框架,通过思考、重组和验证步骤,最终生成高质量科学插图。

原文摘要

High-quality scientific illustrations are crucial for effectively communicating complex scientific and technical concepts, yet their manual creation remains a well-recognized bottleneck in both academia and industry. We present FigureBench, the first large-scale benchmark for generating scientific illustrations from long-form scientific texts. It contains 3,300 high-quality scientific text-figure pairs, covering diverse text-to-illustration tasks from scientific papers, surveys, blogs, and textbooks. Moreover, we propose AutoFigure, the first agentic framework that automatically generates high-quality scientific illustrations based on long-form scientific text. Specifically, before rendering the final result, AutoFigure engages in extensive thinking, recombination, and validation to produce a layout that is both structurally sound and aesthetically refined, outputting a scientific illustration that achieves both structural completeness and aesthetic appeal. Leveraging the high-quality data from FigureBench, we conduct extensive experiments to test the performance of AutoFigure against various baseline methods. The results demonstrate that AutoFigure consistently surpasses all baseline methods, producing publication-ready scientific illustrations. The code, dataset and huggingface space are released in https://github.com/ResearAI/AutoFigure.

标签

科学插图生成 Agentic框架 基准数据集 文本到图像

arXiv 分类

cs.AI cs.CL cs.CV cs.DL