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New Statistical Textural Transforms for Non-Stationary Signals; Application to Generalized Multifractal Analysis

Authors :
CENTRE DE RECHERCHE EN CALCUL APPLIQUE MONTREAL (QUEBEC)
Saucier, Antoine
Muller, Jiri
CENTRE DE RECHERCHE EN CALCUL APPLIQUE MONTREAL (QUEBEC)
Saucier, Antoine
Muller, Jiri
Source :
DTIC AND NTIS
Publication Year :
2000

Abstract

We introduce a method to generate statistical textural transforms that improves the treatment of non-stationarity and leads to a sharper detection of the boundaries between distinct textures (texture segmentation). This method is based on a sliding window processing with fixed size. The basic idea proposed by the authors is to readjust the measuring window around each pixel so as to maximize homogeneity. We use this method with the dimensions D sub n(q) that are derived from the Generalized Multifractal Analysis formalism, to show that the D sub n(q)s can detect and quantify departures from multifractality, while providing the analog of the classical generalized dimension if the measure is multifractal.<br />Pres. at Fractal 2000, "Complexity and Fractals in the Sciences", 6th International Multidisciplinary Conference, 16-19 Apr 2000, Singapore. --Original contains color plates: All DTIC reproductions will be in black and white. This article is from ADA392358 Paradigms of Complexity. Fractals and Structures in the Sciences

Details

Database :
OAIster
Journal :
DTIC AND NTIS
Notes :
text/html, English
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn831717581
Document Type :
Electronic Resource