Neural network simulation of original colors in Friedrich’s Abbey Among Oak Trees featuring discoloured smalt

Artwork appearances change over time due to aging. Smalt, a blue cobalt-tinted glass pigment, deteriorates over time in oil paintings causing significant and irreversible color changes in many artworks. Virtual simulations can hypothesis original appearances while it remains a challenge for smalt-co...

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Vydáno v:Heritage science Ročník 13; číslo 1; s. 388
Hlavní autoři: de Mecquenem, Clément, Eveno, Myriam, Alfeld, Matthias, Calligaro, Thomas, Laval, Eric, Mösl, Kristina, Reiche, Ina
Médium: Journal Article
Jazyk:angličtina
Vydáno: London Springer Nature B.V 06.08.2025
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ISSN:2050-7445
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Shrnutí:Artwork appearances change over time due to aging. Smalt, a blue cobalt-tinted glass pigment, deteriorates over time in oil paintings causing significant and irreversible color changes in many artworks. Virtual simulations can hypothesis original appearances while it remains a challenge for smalt-containing paintings. A novel procedure integrates non-invasive imaging methods, X-ray absorption near-edge structure (XANES), and machine learning to simulate the original colors of a smalt-containing discolored paintings. Macro-X-ray fluorescence provided elemental distribution, reflectance imaging spectroscopy captured color spectra of pigments and XANES informed cobalt speciation in cross sections. Friedrich’s Abbey Among Oak Trees (1808-1810) containing smalt and artificially aged model systems were studied. Machine learning predicted the original hues based on XANES. The procedure allowed us to simulate the original, cooler and more vibrant colors of the painting. The innovative approach visualizes a possible original state of the smalt-containing artwork that can be adapted to other alteration phenomena.
Bibliografie:ObjectType-Article-1
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ISSN:2050-7445
DOI:10.1038/s40494-025-01953-y