Characterization of anisotropic Gaussian random fields by Minkowski tensors

Klatt M, Hörmann M, Mecke K (2022)


Publication Type: Journal article

Publication year: 2022

Journal

Book Volume: 2022

Journal Issue: 4

DOI: 10.1088/1742-5468/ac5dc1

Abstract

Gaussian random fields are among the most important models of amorphous spatial structures and appear across length scales in a variety of physical, biological, and geological applications, from composite materials to geospatial data. Anisotropy in such systems can be sensitively and comprehensively characterized by the so-called Minkowski tensors (MTs) from integral geometry. Here, we analytically calculate expected MTs of arbitrary rank for the level sets of Gaussian random fields. The explicit expressions for interfacial MTs are confirmed in detailed simulations. We demonstrate how the MTs detect and characterize the anisotropy of the level sets, and we clarify which shape information is contained in the MTs of different rank. Using an irreducible representation of the MTs in the Euclidean plane, we show that higher-rank tensors indeed contain additional anisotropy information compared to a rank two tensor. Surprisingly, we can nevertheless predict this information from the second-rank tensor if we assume that the random field is Gaussian. This relation between tensors of different rank is independent of the details of the model. It is, therefore, useful for a null hypothesis test that detects non-Gaussianities in anisotropic random fields.

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How to cite

APA:

Klatt, M., Hörmann, M., & Mecke, K. (2022). Characterization of anisotropic Gaussian random fields by Minkowski tensors. Journal of Statistical Mechanics-Theory and Experiment, 2022(4). https://dx.doi.org/10.1088/1742-5468/ac5dc1

MLA:

Klatt, Michael, Max Hörmann, and Klaus Mecke. "Characterization of anisotropic Gaussian random fields by Minkowski tensors." Journal of Statistical Mechanics-Theory and Experiment 2022.4 (2022).

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