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Hauptverfasser: Xu, Xiaojie, Xu, Xinli, Chen, Sirui, Chen, Haoyu, Zhang, Fan, Chen, Ying-Cong
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2505.21660
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author Xu, Xiaojie
Xu, Xinli
Chen, Sirui
Chen, Haoyu
Zhang, Fan
Chen, Ying-Cong
author_facet Xu, Xiaojie
Xu, Xinli
Chen, Sirui
Chen, Haoyu
Zhang, Fan
Chen, Ying-Cong
contents Visual presentations are vital for effective communication. Early attempts to automate their creation using deep learning often faced issues such as poorly organized layouts, inaccurate text summarization, and a lack of image understanding, leading to mismatched visuals and text. These limitations restrict their application in formal contexts like business and scientific research. To address these challenges, we propose PreGenie, an agentic and modular framework powered by multimodal large language models (MLLMs) for generating high-quality visual presentations. PreGenie is built on the Slidev presentation framework, where slides are rendered from Markdown code. It operates in two stages: (1) Analysis and Initial Generation, which summarizes multimodal input and generates initial code, and (2) Review and Re-generation, which iteratively reviews intermediate code and rendered slides to produce final, high-quality presentations. Each stage leverages multiple MLLMs that collaborate and share information. Comprehensive experiments demonstrate that PreGenie excels in multimodal understanding, outperforming existing models in both aesthetics and content consistency, while aligning more closely with human design preferences.
format Preprint
id arxiv_https___arxiv_org_abs_2505_21660
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PreGenie: An Agentic Framework for High-quality Visual Presentation Generation
Xu, Xiaojie
Xu, Xinli
Chen, Sirui
Chen, Haoyu
Zhang, Fan
Chen, Ying-Cong
Machine Learning
Visual presentations are vital for effective communication. Early attempts to automate their creation using deep learning often faced issues such as poorly organized layouts, inaccurate text summarization, and a lack of image understanding, leading to mismatched visuals and text. These limitations restrict their application in formal contexts like business and scientific research. To address these challenges, we propose PreGenie, an agentic and modular framework powered by multimodal large language models (MLLMs) for generating high-quality visual presentations. PreGenie is built on the Slidev presentation framework, where slides are rendered from Markdown code. It operates in two stages: (1) Analysis and Initial Generation, which summarizes multimodal input and generates initial code, and (2) Review and Re-generation, which iteratively reviews intermediate code and rendered slides to produce final, high-quality presentations. Each stage leverages multiple MLLMs that collaborate and share information. Comprehensive experiments demonstrate that PreGenie excels in multimodal understanding, outperforming existing models in both aesthetics and content consistency, while aligning more closely with human design preferences.
title PreGenie: An Agentic Framework for High-quality Visual Presentation Generation
topic Machine Learning
url https://arxiv.org/abs/2505.21660