This technical report presents novel findings from computational analysis of micro-CT data of carbonized Herculaneum papyrus fragments. Using machine learning methods applied to publicly available datasets from the Vesuvius Challenge, we identify previously unreported structural patterns in ink signals, demonstrate that these patterns vary with scanning parameters, and introduce a training methodology that improves model performance. The package contains a full manuscript, supporting figures, and numerical data. Detailed methodology will be released upon formal publication.Data source: EduceLab-Scrolls Dataset (Parsons, S., Parker, C.S., Chapman, C., Hayashida, M., & Seales, W.B., 2023. EduceLab-Scrolls: Verifiable Recovery of Text from Herculaneum Papyri using X-ray CT. arXiv:2304.02084). Licensed under CC BY-NC 4.0.
Adam Dzieszkowski (Mon,) studied this question.