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Fuzzy Models and Algorithms for Pattern Recognition and Image
Processing presents a comprehensive introduction of the use of
fuzzy models in pattern recognition and selected topics in image
processing and computer vision. Unique to this volume in the Kluwer
Handbooks of Fuzzy Sets Series is the fact that this book was
written in its entirety by its four authors. A single notation,
presentation style, and purpose are used throughout. The result is
an extensive unified treatment of many fuzzy models for pattern
recognition. The main topics are clustering and classifier design,
with extensive material on feature analysis relational clustering,
image processing and computer vision. Also included are numerous
figures, images and numerical examples that illustrate the use of
various models involving applications in medicine, character and
word recognition, remote sensing, military image analysis, and
industrial engineering.
The availability of packaged clustering programs means that anyone
with data can easily do cluster analysis on it. But many users of
this technology don't fully appreciate its many hidden dangers. In
today's world of "grab and go algorithms," part of my motivation
for writing this book is to provide users with a set of cautionary
tales about cluster analysis, for it is very much an art as well as
a science, and it is easy to stumble if you don't understand its
pitfalls. Indeed, it is easy to trip over them even if you do! The
parenthetical word usually in the title is very important, because
all clustering algorithms can and do fail from time to time. Modern
cluster analysis has become so technically intricate that it is
often hard for the beginner or the non-specialist to appreciate and
understand its many hidden dangers. Here's how Yogi Berra put it,
and he was right: In theory there's no difference between theory
and practice. In practice, there is ~Yogi Berra This book is a step
backwards, to four classical methods for clustering in small,
static data sets that have all withstood the tests of time. The
youngest of the four methods is now almost 50 years old: Gaussian
Mixture Decomposition (GMD, 1898) SAHN Clustering (principally
single linkage (SL, 1909)) Hard c-means (HCM, 1956, also widely
known as (aka) "k-means") Fuzzy c-means (FCM, 1973, reduces to HCM
in a certain limit) The dates are the first known writing (to me,
anyway) about these four models. I am (with apologies to Marvel
Comics) very comfortable in calling HCM, FCM, GMD and SL the
Fantastic Four. Cluster analysis is a vast topic. The overall
picture in clustering is quite overwhelming, so any attempt to swim
at the deep end of the pool in even a very specialized subfield
requires a lot of training. But we all start out at the shallow end
(or at least that's where we should start!), and this book is aimed
squarely at teaching toddlers not to be afraid of the water. There
is no section of this book that, if explored in real depth, cannot
be expanded into its own volume. So, if your needs are for an
in-depth treatment of all the latest developments in any topic in
this volume, the best I can do - what I will try to do anyway - is
lead you to the pool, and show you where to jump in.
The fuzzy set was conceived as a result of an attempt to come to
grips with the problem of pattern recognition in the context of
imprecisely defined categories. In such cases, the belonging of an
object to a class is a matter of degree, as is the question of
whether or not a group of objects form a cluster. A pioneering
application of the theory of fuzzy sets to cluster analysis was
made in 1969 by Ruspini. It was not until 1973, however, when the
appearance of the work by Dunn and Bezdek on the Fuzzy ISODATA (or
fuzzy c-means) algorithms became a landmark in the theory of
cluster analysis, that the relevance of the theory of fuzzy sets to
cluster analysis and pattern recognition became clearly
established. Since then, the theory of fuzzy clustering has
developed rapidly and fruitfully, with the author of the present
monograph contributing a major share of what we know today. In
their seminal work, Bezdek and Dunn have introduced the basic idea
of determining the fuzzy clusters by minimizing an appropriately
defined functional, and have derived iterative algorithms for
computing the membership functions for the clusters in question.
The important issue of convergence of such algorithms has become
much better understood as a result of recent work which is
described in the monograph.
Fuzzy Models and Algorithms for Pattern Recognition and Image
Processing presents a comprehensive introduction of the use of
fuzzy models in pattern recognition and selected topics in image
processing and computer vision. Unique to this volume in the Kluwer
Handbooks of Fuzzy Sets Series is the fact that this book was
written in its entirety by its four authors. A single notation,
presentation style, and purpose are used throughout. The result is
an extensive unified treatment of many fuzzy models for pattern
recognition. The main topics are clustering and classifier design,
with extensive material on feature analysis relational clustering,
image processing and computer vision. Also included are numerous
figures, images and numerical examples that illustrate the use of
various models involving applications in medicine, character and
word recognition, remote sensing, military image analysis, and
industrial engineering.
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