AutoFigure-Edit: Generating Editable Scientific Illustration
Summary
AutoFigure-Edit generates editable scientific illustrations from text descriptions and reference images, enabling flexible style adaptation and efficient refinement.
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Paper page - AutoFigure-Edit: Generating Editable Scientific Illustration
Source: https://huggingface.co/papers/2603.06674 Authors:
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Abstract
AutoFigure-Edit is an end-to-end system that generates editable scientific illustrations from text descriptions and reference images, supporting flexible style adaptation and efficient refinement.
High-qualityscientific illustrationsare essential for communicating complex scientific and technical concepts, yet existing automated systems remain limited in editability, stylistic controllability, and efficiency. We present AutoFigure-Edit, anend-to-end systemthat generates fully editablescientific illustrationsfrom long-form scientific text while enabling flexible style adaptation through user-provided reference images. By combining long-context understanding,reference-guided styling, and nativeSVG editing, it enables efficient creation and refinement of high-qualityscientific illustrations. To facilitate further progress in this field, we release the video at https://youtu.be/10IH8SyJjAQ, full codebase at https://github.com/ResearAI/AutoFigure-Edit and provide a website for easy access and interactive use at https://deepscientist.cc/.
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