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This book briefly reviews the basic concepts of type-2 fuzzy
systems and then describes the proposed definitions for interval
type-3 fuzzy sets and relations, also interval type-3 inference and
systems. The use of type-2 fuzzy systems has become widespread in
the leading economy sectors, especially in industrial and
application areas, such as services, health, defense, and so on.
However, recently the use of interval type-3 fuzzy systems has been
receiving increasing attention and some successful applications
have been developed in the last year. These issues were taken into
consideration for this book, as we did realize that there was a
need to offer the main theoretical concepts of type-3 fuzzy logic,
as well as methods to design, develop and implement the type-3
fuzzy systems. A review of basic concepts and their use in the
design and implementation of interval type-3 fuzzy systems, which
are relatively new models of uncertainty and imprecision, are
presented. The main focus of this work is based on the basic
reasons of the need for interval type-3 fuzzy systems in different
areas of application. In addition, we describe methods for
designing interval type-3 fuzzy systems and illustrate this with
some examples and simulations.
In this book four new methods are proposed. In the first method the
generalized type-2 fuzzy logic is combined with the morphological
gra-dient technique. The second method combines the general type-2
fuzzy systems (GT2 FSs) and the Sobel operator; in the third
approach the me-thodology based on Sobel operator and GT2 FSs is
improved to be applied on color images. In the fourth approach, we
proposed a novel edge detec-tion method where, a digital image is
converted a generalized type-2 fuzzy image. In this book it is also
included a comparative study of type-1, inter-val type-2 and
generalized type-2 fuzzy systems as tools to enhance edge detection
in digital images when used in conjunction with the morphologi-cal
gradient and the Sobel operator. The proposed generalized type-2
fuzzy edge detection methods were tested with benchmark images and
synthetic images, in a grayscale and color format. Another
contribution in this book is that the generalized type-2 fuzzy edge
detector method is applied in the preprocessing phase of a face
rec-ognition system; where the recognition system is based on a
monolithic neural network. The aim of this part of the book is to
show the advantage of using a generalized type-2 fuzzy edge
detector in pattern recognition applications. The main goal of
using generalized type-2 fuzzy logic in edge detec-tion
applications is to provide them with the ability to handle
uncertainty in processing real world images; otherwise, to
demonstrate that a GT2 FS has a better performance than the edge
detection methods based on type-1 and type-2 fuzzy logic systems.
In this book, a series of granular algorithms are proposed. A
nature inspired granular algorithm based on Newtonian gravitational
forces is proposed. A series of methods for the formation of
higher-type information granules represented by Interval Type-2
Fuzzy Sets are also shown, via multiple approaches, such as
Coefficient of Variation, principle of justifiable granularity,
uncertainty-based information concept, and numerical evidence
based. And a fuzzy granular application comparison is given as to
demonstrate the differences in how uncertainty affects the
performance of fuzzy information granules.
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