Título

Lattice Algebra Approach to Color Image Segmentation

Autor

GONZALO JORGE URCID SERRANO

JUAN CARLOS VALDIVIEZO NAVARRO

Nivel de Acceso

Acceso Abierto

Resumen o descripción

This manuscript describes a new technique for segmenting color images in different color spaces based on geometrical properties of lattice auto-associative memories. Lattice associative memories are artificial neural networks able to store a finite set X of n-dimensional vectors and recall them when a noisy or incomplete input vector is presented. The canonical lattice auto-associative memories include the min memory W𝚡𝚡 and the max memory M𝚡𝚡, both defined as square matrices of size n × n. The column vectors of W𝚡𝚡 and M𝚡𝚡, scaled additively by the components of the minimum and maximum vector bounds of X, are used to determine a set of extreme points whose convex hull encloses X. Specifically, since color images form subsets of a finite geometrical space, the scaled column vectors of each memory will correspond to saturated color pixels. Thus, maximal tetrahedrons do exist that enclose proper subsets of pixels in X and such that other color pixels are considered as linear mixtures of extreme points determined from the scaled versions of W𝚡𝚡 and M𝚡𝚡. We provide illustrative examples to demonstrate the effectiveness of our method including comparisons with alternative segmentation methods from the literature as well as color separation results in four different color spaces.

Editor

Journal of Mathematical Imaging and Vision

Fecha de publicación

2012

Tipo de publicación

Artículo

Versión de la publicación

Versión aceptada

Formato

application/pdf

Idioma

Inglés

Audiencia

Estudiantes

Investigadores

Público en general

Sugerencia de citación

Urcid Serrano, G. J., et al., (2012), Lattice Algebra Approach to Color Image Segmentation, Journal of Mathematical Imaging and Vision, Vol. 42(2-3):150-162

Repositorio Orígen

Repositorio Institucional del INAOE

Descargas

333

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