Abstract:
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 art...Show MoreMetadata
Abstract:
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 Xray 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.
Date of Conference: 23-27 August 2021
Date Added to IEEE Xplore: 08 December 2021
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University College London, London, UK
Imperial College, London, UK
Duke University, Durham, US
National Gallery, London, UK
National Gallery, London, UK
Imperial College, London, UK
Duke University, Durham, US
University College London, London, UK
University College London, London, UK
Imperial College, London, UK
Duke University, Durham, US
National Gallery, London, UK
National Gallery, London, UK
Imperial College, London, UK
Duke University, Durham, US
University College London, London, UK