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Clustering is an important unsupervised classification technique
where data points are grouped such that points that are similar in
some sense belong to the same cluster. Cluster analysis is a
complex problem as a variety of similarity and dissimilarity
measures exist in the literature. This is the first book focused on
clustering with a particular emphasis on symmetry-based measures of
similarity and metaheuristic approaches. The aim is to find a
suitable grouping of the input data set so that some criteria are
optimized, and using this the authors frame the clustering problem
as an optimization one where the objectives to be optimized may
represent different characteristics such as compactness,
symmetrical compactness, separation between clusters, or
connectivity within a cluster. They explain the techniques in
detail and outline many detailed applications in data mining,
remote sensing and brain imaging, gene expression data analysis,
and face detection. The book will be useful to graduate students
and researchers in computer science, electrical engineering, system
science, and information technology, both as a text and as a
reference book. It will also be useful to researchers and
practitioners in industry working on pattern recognition, data
mining, soft computing, metaheuristics, bioinformatics, remote
sensing, and brain imaging.
This book presents a thorough analysis of gestural data extracted
from raw images and/or range data with an aim to recognize the
gestures conveyed by the data. It covers image morphological
analysis, type-2 fuzzy logic, neural networks and evolutionary
computation for classification of gestural data. The application
areas include the recognition of primitive postures in
ballet/classical Indian dances, detection of pathological disorders
from gestural data of elderly people, controlling motion of cars in
gesture-driven gaming and gesture-commanded robot control for
people with neuro-motor disability. The book is unique in terms of
its content, originality and lucid writing style. Primarily
intended for graduate students and researchers in the field of
electrical/computer engineering, the book will prove equally useful
to computer hobbyists and professionals engaged in building
firmware for human-computer interfaces. A prerequisite of high
school level mathematics is sufficient to understand most of the
chapters in the book. A basic background in image processing,
although not mandatory, would be an added advantage for certain
sections.
This book presents a thorough analysis of gestural data extracted
from raw images and/or range data with an aim to recognize the
gestures conveyed by the data. It covers image morphological
analysis, type-2 fuzzy logic, neural networks and evolutionary
computation for classification of gestural data. The application
areas include the recognition of primitive postures in
ballet/classical Indian dances, detection of pathological disorders
from gestural data of elderly people, controlling motion of cars in
gesture-driven gaming and gesture-commanded robot control for
people with neuro-motor disability. The book is unique in terms of
its content, originality and lucid writing style. Primarily
intended for graduate students and researchers in the field of
electrical/computer engineering, the book will prove equally useful
to computer hobbyists and professionals engaged in building
firmware for human-computer interfaces. A prerequisite of high
school level mathematics is sufficient to understand most of the
chapters in the book. A basic background in image processing,
although not mandatory, would be an added advantage for certain
sections.
Clustering is an important unsupervised classification technique
where data points are grouped such that points that are similar in
some sense belong to the same cluster. Cluster analysis is a
complex problem as a variety of similarity and dissimilarity
measures exist in the literature. This is the first book focused on
clustering with a particular emphasis on symmetry-based measures of
similarity and metaheuristic approaches. The aim is to find a
suitable grouping of the input data set so that some criteria are
optimized, and using this the authors frame the clustering problem
as an optimization one where the objectives to be optimized may
represent different characteristics such as compactness,
symmetrical compactness, separation between clusters, or
connectivity within a cluster. They explain the techniques in
detail and outline many detailed applications in data mining,
remote sensing and brain imaging, gene expression data analysis,
and face detection. The book will be useful to graduate students
and researchers in computer science, electrical engineering, system
science, and information technology, both as a text and as a
reference book. It will also be useful to researchers and
practitioners in industry working on pattern recognition, data
mining, soft computing, metaheuristics, bioinformatics, remote
sensing, and brain imaging.
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