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Bayesian crack detection in ultra high resolution multimodal images of paintings

dc.contributor.author Cornelis, B
dc.contributor.author Yang, Y
dc.contributor.author Vogelstein, JT
dc.contributor.author Dooms, A
dc.contributor.author Daubechies, I
dc.contributor.author Dunson, D
dc.date.accessioned 2017-10-01T21:19:27Z
dc.date.available 2017-10-01T21:19:27Z
dc.date.issued 2013-12-06
dc.identifier.uri https://hdl.handle.net/10161/15603
dc.description.abstract The preservation of our cultural heritage is of paramount importance. Thanks to recent developments in digital acquisition techniques, powerful image analysis algorithms are developed which can be useful non-invasive tools to assist in the restoration and preservation of art. In this paper we propose a semi-supervised crack detection method that can be used for high-dimensional acquisitions of paintings coming from different modalities. Our dataset consists of a recently acquired collection of images of the Ghent Altarpiece (1432), one of Northern Europe's most important art masterpieces. Our goal is to build a classifier that is able to discern crack pixels from the background consisting of non-crack pixels, making optimal use of the information that is provided by each modality. To accomplish this we employ a recently developed non-parametric Bayesian classifier, that uses tensor factorizations to characterize any conditional probability. A prior is placed on the parameters of the factorization such that every possible interaction between predictors is allowed while still identifying a sparse subset among these predictors. The proposed Bayesian classifier, which we will refer to as conditional Bayesian tensor factorization or CBTF, is assessed by visually comparing classification results with the Random Forest (RF) algorithm. © 2013 IEEE.
dc.publisher IEEE
dc.relation.ispartof 2013 18th International Conference on Digital Signal Processing, DSP 2013
dc.relation.isversionof 10.1109/ICDSP.2013.6622710
dc.title Bayesian crack detection in ultra high resolution multimodal images of paintings
dc.type Journal article
duke.contributor.id Daubechies, I|0549786
duke.contributor.id Dunson, D|0277221
pubs.organisational-group Duke
pubs.organisational-group Duke Institute for Brain Sciences
pubs.organisational-group Electrical and Computer Engineering
pubs.organisational-group Institutes and Provost's Academic Units
pubs.organisational-group Mathematics
pubs.organisational-group Pratt School of Engineering
pubs.organisational-group Statistical Science
pubs.organisational-group Trinity College of Arts & Sciences
pubs.organisational-group University Institutes and Centers
pubs.publication-status Published


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