The geometrical meaning of statistical isotropy of smooth random fields in two dimensions
Pravabati Chingangbam, Priya Goyal, K. P. Yogendran, Stephen, Appleby

TL;DR
This paper explores the geometrical interpretation of statistical isotropy in two-dimensional smooth random fields using the contour Minkowski tensor, providing new insights into shape and orientation analysis of excursion sets.
Contribution
It introduces a novel application of the contour Minkowski tensor to analyze the geometry and orientation of structures in isotropic and anisotropic random fields.
Findings
W_1 is proportional to the identity matrix for m-fold symmetric curves with m≥3
W_1 maps any simple closed curve to a unique ellipse up to translation
Derived analytic expressions for shape parameters considering finite sampling effects
Abstract
We revisit the geometrical meaning of statistical isotropy that is manifest in excursion sets of smooth random fields in two dimensions. Using the contour Minkowski tensor, , as our basic tool we first examine geometrical properties of single structures. For simple closed curves in two dimensions we show that is proportional to the identity matrix if the curve has -fold symmetry, with . Then we elaborate on how maps any arbitrary shaped simple closed curve to an ellipse that is unique up to translations of its centroid. We also carry out a comparison of the shape parameters, and , defined using , with the filamentarity parameter defined using two scalar Minkowski functionals - area and contour length. We show that they contain complementary shape information, with containing additional information of orientation of structures.…
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