6533b86efe1ef96bd12cbdd1

RESEARCH PRODUCT

Evaluation of the areal material distribution of paper from its optical transmission image

Jussi TimonenJouni TakaloSamuli SiltanenJouni SampoJouni SampoMatti Lassas

subject

[PHYS]Physics [physics]ta114Computer scienceGaussianWavelet transform010103 numerical & computational mathematicsCondensed Matter Physics01 natural sciences030218 nuclear medicine & medical imagingElectronic Optical and Magnetic MaterialsTikhonov regularization03 medical and health sciencessymbols.namesake0302 clinical medicinePrior probabilityPhysical SciencessymbolsBesov spaceA priori and a posterioriDeconvolution0101 mathematicsGradient descentInstrumentationAlgorithm

description

International audience; The goal of this study was to evaluate the areal mass distribution (defined as the X-ray transmission image) of paper from its optical transmission image. A Bayesian inversion framework was used in the related deconvolution process so as to combine indirect optical information with a priori knowledge about the type of paper imaged. The a priori knowledge was expressed in the form of an empirical Besov space prior distribution constructed in a computationally effective way using the wavelet transform. The estimation process took the form of a large-scale optimization problem, which was in turn solved using the gradient descent method of Barzilai and Borwein. It was demonstrated that optical transmission images can indeed be transformed so as to fairly closely resemble the ones that reflect the true areal distribution of mass. Furthermore, the Besov space prior was found to give better results than the classical Gaussian smoothness prior (here equivalent to Tikhonov regularization).

10.1051/epjap/2011100366https://hal.archives-ouvertes.fr/hal-00723601/file/PEER_stage2_10.1051%2Fepjap%2F2011100366.pdf