2015
DOI: 10.1103/physreve.91.032401
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Reconstruction of nonstationary disordered materials and media: Watershed transform and cross-correlation function

Abstract: Nonstationary disordered materials and media -those for which the probability distribution function of any property varies spatially when shifted in space -are abundant and encountered in astrophysics, oceanography, air pollution patterns, large-scale porous media, biological tissues and organs, and composite materials. Their reconstruction and modeling is a notoriously difficult and largely unsolved problem. We propose a method for reconstructing a broad class

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Cited by 53 publications
(22 citation statements)
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“…Our model was found to fit the type of porous polymer film we study well . A larger range of pore geometries, for example, for particle based systems, can be obtained using simulated annealing based reconstructions and pattern‐based simulation methods . Examples of other types of stochastic models that have been used to connect microstructure to transport properties can be found in Blunt et al, Kim and Pitsch, and Stenzel et al…”
Section: Introductionmentioning
confidence: 57%
“…Our model was found to fit the type of porous polymer film we study well . A larger range of pore geometries, for example, for particle based systems, can be obtained using simulated annealing based reconstructions and pattern‐based simulation methods . Examples of other types of stochastic models that have been used to connect microstructure to transport properties can be found in Blunt et al, Kim and Pitsch, and Stenzel et al…”
Section: Introductionmentioning
confidence: 57%
“…Accordingly, a variety of material reconstruction schemes have been devised for different microstructure representations. Examples include the Gaussian random field method [35], stochastic optimization method [36,37,38,39], gradient-based method [40], phase-retrieval method [41], iterative methods based on multi-point statistics [42,43], Bayesian Network Method [44] and cross-correlation functions [45,46], and image synthesis method [26,47]. Recently, a new reconstruction method is proved to be efficient at synthesizing Markovian microstructures [48] where the probability distribution of the material composition at each pixel (or voxel) is determined by its local surroundings and the conditional probability model can be applied homogeneously across a microstructure sample, see Fig.…”
Section: Microstructure Parametrization and Reconstructionmentioning
confidence: 99%
“…In this paper, an alternative concept of direct use of the available images of complex materials is proposed, in which not only are none of the current statistical descriptors are needed, but also different phases are used directly [37,39]. Thus, the first step in this algorithm is obtaining 2D or 3D images of the disordered material (i.e., I).…”
Section: Methodsmentioning
confidence: 99%