Multi-modal dictionary learning for image separation with application in art investigation
Nikos Deligiannis, Joao F. C. Mota, Bruno Cornelis, Miguel R. D., Rodrigues, Ingrid Daubechies

TL;DR
This paper introduces a novel coupled dictionary learning approach for separating X-ray images of double-sided paintings by leveraging photographic data, significantly improving art investigation techniques.
Contribution
The paper presents a new multi-modal dictionary learning framework that effectively couples photographs and X-ray data for accurate source separation in art analysis.
Findings
Outperforms existing morphological component analysis methods.
Effective on both synthetic and real data from Ghent Altarpiece.
Significant improvement with multi-scale framework.
Abstract
In support of art investigation, we propose a new source separation method that unmixes a single X-ray scan acquired from double-sided paintings. In this problem, the X-ray signals to be separated have similar morphological characteristics, which brings previous source separation methods to their limits. Our solution is to use photographs taken from the front and back-side of the panel to drive the separation process. The crux of our approach relies on the coupling of the two imaging modalities (photographs and X-rays) using a novel coupled dictionary learning framework able to capture both common and disparate features across the modalities using parsimonious representations; the common component models features shared by the multi-modal images, whereas the innovation component captures modality-specific information. As such, our model enables the formulation of appropriately…
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