INVESTIGADORES
FLESIA Ana Georgina
capítulos de libros
Título:
Inference Strategies for Texture Parameters
Autor/es:
JORGE MARTINEZ; SILVINA PISTONESI; ANA GEORGINA FLESIA
Libro:
Lecture Notes in Computer Science, CIARP 2015
Editorial:
Springer International Publishing Switzerland 2015
Referencias:
Año: 2015; p. 460 - 467
Resumen:
The Autobinomial model is commonplace in Bayesian image analysis since its introduction as a convenient image model. Such model depends on a set of parameters; their value characterizes texture allowing to perform classification of the whole image into regions with uniform properties of the model.This work proposes a new estimator of the parameter vector of theAutobinomial model based on Conditional Least Square minimization via Real Coded Genetic Modeling and analyzes its performance compared to the classical linear approximation, which exchanges the CLS equation with a reduced Taylor equation prior to minimization. Our simulation study shows that the genetic modeling approach gives more accurate estimations when true data is provided. We also discuss its influence in a set of classification experiments with multispectral optical imagery, estimating the scalar vector parameter with our estimator and the classical linear one. Our experiments show promising results since our approach is able to distinguish image features that the classical approach does not.