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A Learning Based Approach to Separate Mixed X-Ray Images Associated with Artwork with Concealed Designs

Publication ,  Conference
Pu, W; Huang, J; Sober, B; Daly, N; Higgitt, C; Dragotti, PL; Daubechies, I; Rodrigues, MRD
Published in: European Signal Processing Conference
January 1, 2021

X-ray images are widely used in the study of paintings. When a painting has hidden sub-surface features (e.g., reuse of the canvas or revision of a composition by the artist), the resulting X-ray images can be hard to interpret as they include contributions from both the surface painting and the hidden design. In this paper we propose a self-supervised deep learning-based image separation approach that can be applied to the X-ray images from such paintings ('mixed X-ray images') to separate them into two hypothetical X-ray images, one containing information related to the visible painting only and the other containing the hidden features. The proposed approach involves two steps: (1) separation of the mixed X-ray image into two images, guided by the combined use of a reconstruction and an exclusion loss; (2) even allocation of the error map into the two individual, separated X-ray images, yielding separation results that have an appearance that is more familiar in relation to X-ray images. The proposed method was demonstrated on a real painting with hidden content, Doña Isabel de Porcel by Francisco de Goya, to show its effectiveness.

Duke Scholars

Published In

European Signal Processing Conference

DOI

ISSN

2219-5491

Publication Date

January 1, 2021

Volume

2021-August

Start / End Page

1491 / 1495
 

Citation

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MLA
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Pu, W., Huang, J., Sober, B., Daly, N., Higgitt, C., Dragotti, P. L., … Rodrigues, M. R. D. (2021). A Learning Based Approach to Separate Mixed X-Ray Images Associated with Artwork with Concealed Designs. In European Signal Processing Conference (Vol. 2021-August, pp. 1491–1495). https://doi.org/10.23919/EUSIPCO54536.2021.9616096
Pu, W., J. Huang, B. Sober, N. Daly, C. Higgitt, P. L. Dragotti, I. Daubechies, and M. R. D. Rodrigues. “A Learning Based Approach to Separate Mixed X-Ray Images Associated with Artwork with Concealed Designs.” In European Signal Processing Conference, 2021-August:1491–95, 2021. https://doi.org/10.23919/EUSIPCO54536.2021.9616096.
Pu W, Huang J, Sober B, Daly N, Higgitt C, Dragotti PL, et al. A Learning Based Approach to Separate Mixed X-Ray Images Associated with Artwork with Concealed Designs. In: European Signal Processing Conference. 2021. p. 1491–5.
Pu, W., et al. “A Learning Based Approach to Separate Mixed X-Ray Images Associated with Artwork with Concealed Designs.” European Signal Processing Conference, vol. 2021-August, 2021, pp. 1491–95. Scopus, doi:10.23919/EUSIPCO54536.2021.9616096.
Pu W, Huang J, Sober B, Daly N, Higgitt C, Dragotti PL, Daubechies I, Rodrigues MRD. A Learning Based Approach to Separate Mixed X-Ray Images Associated with Artwork with Concealed Designs. European Signal Processing Conference. 2021. p. 1491–1495.

Published In

European Signal Processing Conference

DOI

ISSN

2219-5491

Publication Date

January 1, 2021

Volume

2021-August

Start / End Page

1491 / 1495