Geological Facies Recovery Based on Weighted l(1)-Regularization

Calderon, Hernan; Santibañez, Felipe; Silva, Jorge F.; Ortiz, Julián M.; Egaña, Alvaro

Abstract

A weighted compressed sensing (WCS) algorithm is proposed for the problem of channelizetl facies reconstruction from pixel-based measurements. This strategy integrates information from: (i) image structure in a transform domain (the discrete cosine transform); and (ii) a statistical model obtained from the use of multiple-point simulations (MPS) and a training image. A method is developed to integrate multiple-point statistics within the context of WCS, using for that a collection of weight definitions. In the experimental validation, excellent results are reported showing that the WCS provides good reconstruction for geological facies models even in the range of [0.3-1%] pixel-based measurements. Experiments show that the proposed solution outperforms methods based on pure CS and MPS, when the performance is measured in terms of signal-to-noise ratio, and similarity perceptual indicators.

Más información

Título según WOS: Geological Facies Recovery Based on Weighted l(1)-Regularization
Título según SCOPUS: Geological Facies Recovery Based on Weighted ?1 -Regularization
Título de la Revista: MATHEMATICAL GEOSCIENCES
Volumen: 52
Número: 5
Editorial: SPRINGER HEIDELBERG
Fecha de publicación: 2019
Idioma: English
DOI:

10.1007/S11004-019-09825-5

Notas: ISI, SCOPUS