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Main Authors: Lamott, Marcel, Saifullah, Saifullah, Riaz, Nauman, Weweler, Yves-Noel, Alt-Veit, Tobias, Ali, Ahmad Sarmad, Shakir, Muhammad Armaghan, Kalwa, Adrian, Moetesum, Momina, Dengel, Andreas, Ahmed, Sheraz, Shafait, Faisal, Schwanecke, Ulrich, Ulges, Adrian
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.21824
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author Lamott, Marcel
Saifullah, Saifullah
Riaz, Nauman
Weweler, Yves-Noel
Alt-Veit, Tobias
Ali, Ahmad Sarmad
Shakir, Muhammad Armaghan
Kalwa, Adrian
Moetesum, Momina
Dengel, Andreas
Ahmed, Sheraz
Shafait, Faisal
Schwanecke, Ulrich
Ulges, Adrian
author_facet Lamott, Marcel
Saifullah, Saifullah
Riaz, Nauman
Weweler, Yves-Noel
Alt-Veit, Tobias
Ali, Ahmad Sarmad
Shakir, Muhammad Armaghan
Kalwa, Adrian
Moetesum, Momina
Dengel, Andreas
Ahmed, Sheraz
Shafait, Faisal
Schwanecke, Ulrich
Ulges, Adrian
contents Effective document intelligence models rely on large amounts of annotated training data. However, procuring sufficient and high-quality data poses significant challenges due to the labor-intensive and costly nature of data acquisition. Additionally, leveraging language models to annotate real documents raises concerns about data privacy. Synthetic document generation has emerged as a promising, privacy-preserving alternative. We propose DocDjinn, a novel framework for controllable synthetic document generation using Vision-Language Models (VLMs) that produces annotated documents from unlabeled seed samples. Our approach generates visually plausible and semantically consistent synthetic documents that follow the distribution of an existing source dataset through clustering-based seed selection with parametrized sampling. By enriching documents with realistic diffusion-based handwriting and contextual visual elements via semantic-visual decoupling, we generate diverse, high-quality annotated synthetic documents. We evaluate across eleven benchmarks spanning key information extraction, question answering, document classification, and document layout analysis. To our knowledge, this is the first work demonstrating that VLMs can generate faithful annotated document datasets at scale from unlabeled seeds that can effectively enrich or approximate real, manually annotated data for diverse document understanding tasks. We show that with only 100 real training samples, our framework achieves on average $87\%$ of the performance of the full real-world dataset. We publicly release our code and 140k+ synthetic document samples.
format Preprint
id arxiv_https___arxiv_org_abs_2602_21824
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle DocDjinn: Controllable Synthetic Document Generation with VLMs and Handwriting Diffusion
Lamott, Marcel
Saifullah, Saifullah
Riaz, Nauman
Weweler, Yves-Noel
Alt-Veit, Tobias
Ali, Ahmad Sarmad
Shakir, Muhammad Armaghan
Kalwa, Adrian
Moetesum, Momina
Dengel, Andreas
Ahmed, Sheraz
Shafait, Faisal
Schwanecke, Ulrich
Ulges, Adrian
Machine Learning
Effective document intelligence models rely on large amounts of annotated training data. However, procuring sufficient and high-quality data poses significant challenges due to the labor-intensive and costly nature of data acquisition. Additionally, leveraging language models to annotate real documents raises concerns about data privacy. Synthetic document generation has emerged as a promising, privacy-preserving alternative. We propose DocDjinn, a novel framework for controllable synthetic document generation using Vision-Language Models (VLMs) that produces annotated documents from unlabeled seed samples. Our approach generates visually plausible and semantically consistent synthetic documents that follow the distribution of an existing source dataset through clustering-based seed selection with parametrized sampling. By enriching documents with realistic diffusion-based handwriting and contextual visual elements via semantic-visual decoupling, we generate diverse, high-quality annotated synthetic documents. We evaluate across eleven benchmarks spanning key information extraction, question answering, document classification, and document layout analysis. To our knowledge, this is the first work demonstrating that VLMs can generate faithful annotated document datasets at scale from unlabeled seeds that can effectively enrich or approximate real, manually annotated data for diverse document understanding tasks. We show that with only 100 real training samples, our framework achieves on average $87\%$ of the performance of the full real-world dataset. We publicly release our code and 140k+ synthetic document samples.
title DocDjinn: Controllable Synthetic Document Generation with VLMs and Handwriting Diffusion
topic Machine Learning
url https://arxiv.org/abs/2602.21824