Genetic algorithm optimization of adaptive multi-scale GLCM features


Autoria(s): Walker, Ross; Jackway, Paul T.; Longstaff, Dennis
Contribuinte(s)

X. Jiang

Data(s)

01/02/2003

Resumo

We introduce a new second-order method of texture analysis called Adaptive Multi-Scale Grey Level Co-occurrence Matrix (AMSGLCM), based on the well-known Grey Level Co-occurrence Matrix (GLCM) method. The method deviates significantly from GLCM in that features are extracted, not via a fixed 2D weighting function of co-occurrence matrix elements, but by a variable summation of matrix elements in 3D localized neighborhoods. We subsequently present a new methodology for extracting optimized, highly discriminant features from these localized areas using adaptive Gaussian weighting functions. Genetic Algorithm (GA) optimization is used to produce a set of features whose classification worth is evaluated by discriminatory power and feature correlation considerations. We critically appraised the performance of our method and GLCM in pairwise classification of images from visually similar texture classes, captured from Markov Random Field (MRF) synthesized, natural, and biological origins. In these cross-validated classification trials, our method demonstrated significant benefits over GLCM, including increased feature discriminatory power, automatic feature adaptability, and significantly improved classification performance.

Identificador

http://espace.library.uq.edu.au/view/UQ:66811

Idioma(s)

eng

Publicador

World Scientific

Palavras-Chave #Computer Science, Artificial Intelligence #Computer Vision #Co-occurrence #Genetic Algorithm #Glcm #Amsglcm #Image Processing #Pattern Recognition #Texture Analysis #Texture Classification #Performance Evaluation #Matrices #C1 #280203 Image Processing #730201 Women's health
Tipo

Journal Article