In this contribution, we define (and test) a pipeline to perform virtual painting recolouring using raw data of x-ray Fluorescence (XRF) analysis on pictorial artworks. To circumvent the small dataset size, we generate a synthetic dataset, starting from a database of XRF spectra; furthermore, to ensure a better generalisation capacity (and to tackle the issue of in-memory size and inference time), we define a Deep Variational Embedding network to embed the XRF spectra into a lower dimensional, K-Means friendly, metric space. We thus train a set of models to assign coloured images to embedded XRF images. We report here the devised pipeline performances in terms of visual quality metrics, and we close on a discussion on the results.

Towards virtual painting recolouring using vision transformer on x-ray fluorescence datacubes / Bombini, Alessandro; García-Avello Bofías, Fernando; Giambi, Francesca; Ruberto, Chiara. - In: MACHINE LEARNING: SCIENCE AND TECHNOLOGY. - ISSN 2632-2153. - ELETTRONICO. - 6:(2025), pp. 015058.0-015058.0. [10.1088/2632-2153/adb937]

Towards virtual painting recolouring using vision transformer on x-ray fluorescence datacubes

Giambi, Francesca;Ruberto, Chiara
2025

Abstract

In this contribution, we define (and test) a pipeline to perform virtual painting recolouring using raw data of x-ray Fluorescence (XRF) analysis on pictorial artworks. To circumvent the small dataset size, we generate a synthetic dataset, starting from a database of XRF spectra; furthermore, to ensure a better generalisation capacity (and to tackle the issue of in-memory size and inference time), we define a Deep Variational Embedding network to embed the XRF spectra into a lower dimensional, K-Means friendly, metric space. We thus train a set of models to assign coloured images to embedded XRF images. We report here the devised pipeline performances in terms of visual quality metrics, and we close on a discussion on the results.
2025
6
0
0
Bombini, Alessandro; García-Avello Bofías, Fernando; Giambi, Francesca; Ruberto, Chiara
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1424060
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