Project Introduction
Context
Palimpsests are historical manuscripts in which earlier text has been deliberately erased or scraped away to make room for new writing, a common practice in antiquity and the Middle Ages due to the high cost and scarcity of writing materials such as parchment. This reuse often leaves faint traces of the original (undertext) beneath the later (overtext), creating complex, overlapping layers that are extremely difficult to decipher with the naked eye or conventional imaging. Paleographers and historians face major challenges in recovering these hidden layers, as natural degradation, including ink fading, parchment discoloration, surface damage, and domain-specific noise, further obscures the original content. Traditional methods struggle to separate the intertwined layers non-invasively while preserving paleographic authenticity, limiting access to invaluable cultural and historical knowledge embedded in these manuscripts.
Objective
The primary objective of the MSI+ project is to develop an advanced generative AI framework that integrates multispectral imaging (MSI) data across ultraviolet, visible, and near-infrared bands to enhance and reconstruct hidden undertext in palimpsests. By leveraging modern AI techniques, the project aims to produce clearer, more readable images of the original erased text and enable more accurate subsequent text extraction. The approach focuses on transforming raw, degraded multispectral data into high-fidelity enhanced representations suitable for paleographic analysis, while emphasizing data efficiency and robustness in the face of limited real-world training samples typical of historical manuscripts.
Knowledge Gain
This project seeks to bridge the longstanding gap between black-box deep learning models and the interpretability requirements of the interpretive humanities. By incorporating domain-informed inductive biases and physically grounded representations of spectral properties, MSI+ aims to make AI-driven analysis more transparent and verifiable by experts in manuscript studies. The resulting methodological advances will contribute to computational paleography and digital humanities, offering new tools for non-invasive cultural heritage preservation. Ultimately, the work will facilitate broader access to previously inaccessible historical texts, supporting global efforts to safeguard and study our shared written heritage in a sustainable and scientifically rigorous manner.
Research Roadmap
Phase 1 — Generative MSI Enhancement & Reconstruction
Work Package 1a: Spectral Signature Learning
Coming Soon
Parametric decomposition of ink vs. parchment spectral profiles.
Work Package 1b: Multi-Stage Character Reconstruction
Coming Soon
Coarse-to-fine inpainting guided by typographic shape priors.
Phase 2 — Cross-Modal Text Extraction
Work Package 2a: Cross-Modal Alignment & Completion
Coming Soon
Vision Transformers for aligning degraded strokes with character templates.
Work Package 2b: Synthetic-to-Real Transfer
Coming Soon
Adversarial domain adaptation tailored for low-resource historical scripts.
Deliverables & Open Science
Datasets
- SGP Dataset (Synthetic MSI Images of Georgian Palimpsests) DOI: 10.25592/uhhfdm.13378
- Real MSI Benchmarks [Coming Soon and Subject to Licensing]
- Characters Templates Library [Coming Soon]
Source Code & Models
- Source Code 1 (Coming Soon)
- Source Code 2 (Coming Soon)
- Pre-trained weights (Coming soon)
Dissemination & Impact
Related Publications
- M. Jampour, "Character Localization in Degraded Historical Documents via Heatmap-Guided UNet3+ with Application on Palimpsests," 2025 12th International Conference on Soft Computing & Machine Intelligence (ISCMI), Rio de Janeiro, Brazil, 2025, pp. 70-76.[Excellent Oral Presentation Award].[PDF]
- M. Jampour, "Revealing Palimpsests with Latent Diffusion Models: A Generative Approach to Image Inpainting and Handwriting Reconstruction," in 2025 IEEE/CVF Winter Conference on Applications of Computer Vision Workshops (WACVW), 2025 [PDF]
- H. A. Mohammed, M. Jampour, and J. Gippert, "Inpainting with Generative AI: A Significant Step towards Automatically Deciphering Palimpsests," in Palimpsests and Related Phenomena across Languages and Cultures, J. Gippert, J. Maksimczuk, and H. Sargsyan, Eds. Berlin, Germany: De Gruyter, 2025, pp. 535–545. [PDF]
- M. Jampour, "Enhancing the Readability of Palimpsests Using Generative Image Inpainting," International Conference on Pattern Recognition Applications and Methods (2024) pp. 687-694. [PDF]
Workshops & Talks
Announcements of CSMC seminars, conference presentations and invited talks will appear here.
Funding & Acknowledgments
Funded by the [Founder Name]
Project Number: [###]
We express our gratitude to the [###] for supporting this research into safeguarding global cultural heritage.
Team & Colleagues
Principal Investigator: Dr. Mahdi Champour (Jampour)
PhD Student: Coming soon
Research Assistants: Coming soon
Cooperation Partners: Prof. Dr. Jost Gippert, | Dr. Alba Fedeli, | Prof. Ralf Möller, | Prof. Xiaoyi Jiang, | Prof. Ekta Vats, | Prof. Malihe Javidi |
Affiliation: Universität Hamburg | Centre for the Study of Manuscript Cultures (CSMC)