Towards virtual painting recolouring using Vision Transformer on X-Ray Fluorescence datacubes
Bombini, Alessandro, Bofías, Fernando García-Avello, Giambi, Francesca, Ruberto, Chiara
–arXiv.org Artificial Intelligence
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.
arXiv.org Artificial Intelligence
Oct-11-2024