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Homological Region Adjacency Tree for a 3D Binary Digital Image via HSF Model

Authors

Real, Pedro , Molina-Abril, Helena , Diaz-del-Rio, Fernando , BLANCO TREJO, SERGIO

External publication

No

Means

Computer Analysis Of Images And Patterns, Caip 2019, Pt I

Scope

Proceedings Paper

Nature

Científica

JCR Quartile

SJR Quartile

Publication date

01/01/2019

ISI

000558153800030

Abstract

Given a 3D binary digital image I, we define and compute an edge-weighted tree, called Homological Region Tree (or Hom-Tree, for short). It coincides, as unweighted graph, with the classical Region Adjacency Tree of black 6-connected components (CCs) and white 26-connected components of I. In addition, we define the weight of an edge (R, S) as the number of tunnels that the CCs R and S "share". The Hom-Tree structure is still an isotopic invariant of I. Thus, it provides information about how the different homology groups interact between them, while preserving the duality of black and white CCs. An experimentation with a set of synthetic images showing different shapes and different complexity of connected component nesting is performed for numerically validating the method.

Keywords

Binary 3D digital image; Region Adjacency Tree; Combinatorial topology; Homological Spanning Forest

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