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This text presents techniques for describing image textures.
Contrary to the usual practice of embedding the images to known
modelling frameworks borrowed from statistical physics or other
domains, this book deduces the Gibbs models from basic image
features and tailors the modelling framework to the images. This
approach results in more general Gibbs models than can be either
Markovian or non-Markovian and possess arbitrary interaction
structures and strengths. The book presents computationally
feasible algorithms for parameter estimation and image simulation
and demonstrates their abilities and limitations by numerous
experimental results. The book avoids too abstract mathematical
constructions and gives explicit image-based explanations of all
the notions involved.
Image analysis is one of the most challenging areas in today's
computer sci ence, and image technologies are used in a host of
applications. This book concentrates on image textures and presents
novel techniques for their sim ulation, retrieval, and segmentation
using specific Gibbs random fields with multiple pairwise
interaction between signals as probabilistic image models. These
models and techniques were developed mainly during the previous
five years (in relation to April 1999 when these words were
written). While scanning these pages you may notice that, in spite
of long equa tions, the mathematical background is extremely
simple. I have tried to avoid complex abstract constructions and
give explicit physical (to be spe cific, "image-based")
explanations to all the mathematical notions involved. Therefore it
is hoped that the book can be easily read both by professionals and
graduate students in computer science and electrical engineering
who take an interest in image analysis and synthesis. Perhaps,
mathematicians studying applications of random fields may find here
some less traditional, and thus controversial, views and
techniques.
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