MODELS OF COVARIANCE FUNCTIONS OF GAUSSIAN RANDOM FIELDS ESCAPING FROM ISOTROPY, STATIONARITY AND NON NEGATIVITY

Authors

  • Pablo Gregori Instituto Universitario de Matemáticas y Aplicaciones de Castellón, Departamento de Matemáticas, Universitat Jaume I de Castellón
  • Emilio Porcu Universidad Federico Santa María Departamento de Matemáticas Valparaíso
  • Jorge Mateu Instituto Universitario de Matemáticas y Aplicaciones de Castellón, Departamento de Matemáticas, Universitat Jaume I de Castellón

DOI:

https://doi.org/10.5566/ias.v33.p75-81

Keywords:

anisotropy, covariance model, Gaussian random field, non negativity, non stationarity

Abstract

This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random Fields (GRF), tools of Geostatistics at hand for the understanding of special cases of noise in image analysis. They can be used when stationarity or isotropy are unrealistic assumptions, or even when negative covariance between some couples of locations are evident. We show some strategies in order to escape from these restrictions, on the basis of rich classes of well known stationary or isotropic non negative covariance models, and through suitable operations, like linear combinations, generalized means, or with particular Fourier transforms.

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Published

2014-03-05

How to Cite

Gregori, P., Porcu, E., & Mateu, J. (2014). MODELS OF COVARIANCE FUNCTIONS OF GAUSSIAN RANDOM FIELDS ESCAPING FROM ISOTROPY, STATIONARITY AND NON NEGATIVITY. Image Analysis and Stereology, 33(1), 75–81. https://doi.org/10.5566/ias.v33.p75-81

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Section

Short Research Communication