Articolo in rivista, 2007, ENG, 10.1007/s10032-006-0028-7

Digital image analysis to enhance underwritten text in the Archimedes palimpsest

Salerno E.; Tonazzini A.; Bedini L.

CNR-ISTI, Pisa, Italy; CNR-ISTI, Pisa, Italy; CNR-ISTI, Pisa, Italy

This paper reports some of the results obtained by applying statistical processing techniques to multispectral images of the Archimedes palimpsest. We focused on the possibilities of extracting the faint and highly degraded underwritten text,which constitutes the most ancient source for several treatises by Archimedes. Assuming each image to be generated by a linear mixture of different patterns, characterized by different emissivity spectra, the specific difficulty in separating the underwriting is that the mixture coefficients are unknown. To solve this problem, we rely on statistical techniques that maximize the information content of the processed images. In particular, we assessed the performances of the principal component analysis (PCA) and the independent component analysis (ICA) techniques. On the basis of 14 hyperspectral views of part of the palimpsest, we succeeded to extract clean maps of the primary Archimedes text, the overwritten text, and the mold pattern present in the pages. This goal was not reached in all the cases, because of the nonperfect adherence of the data model to reality. In most cases, however, PCA and ICA produced a significant enhancement of the underwritten text.

International journal on document analysis and recognition (Print) 9 (2-4), pp. 79–87

Keywords

I.4.6 Segmentation, Blind source separation

CNR authors

Bedini Luigi, Salerno Emanuele, Tonazzini Anna

CNR institutes

ISTI – Istituto di scienza e tecnologie dell'informazione "Alessandro Faedo"

ID: 68350

Year: 2007

Type: Articolo in rivista

Creation: 2009-06-16 00:00:00.000

Last update: 2018-01-24 09:39:08.000

External links

OAI-PMH: Dublin Core

OAI-PMH: Mods

OAI-PMH: RDF

DOI: 10.1007/s10032-006-0028-7

External IDs

CNR OAI-PMH: oai:it.cnr:prodotti:68350

DOI: 10.1007/s10032-006-0028-7

ISI Web of Science (WOS): 000247735100002

Scopus: 2-s2.0-34147124519