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The book provides a platform for dealing with the flaws and
failings of the soft computing paradigm through different
manifestations. The different chapters highlight the necessity of
the hybrid soft computing methodology in general with emphasis on
several application perspectives in particular. Typical examples
include (a) Study of Economic Load Dispatch by Various Hybrid
Optimization Techniques, (b) An Application of Color Magnetic
Resonance Brain Image Segmentation by Para Optimus LG Activation
Function, (c) Hybrid Rough-PSO Approach in Remote Sensing Imagery
Analysis, (d) A Study and Analysis of Hybrid Intelligent Techniques
for Breast Cancer Detection using Breast Thermograms, and (e)
Hybridization of 2D-3D Images for Human Face Recognition. The
elaborate findings of the chapters enhance the exhibition of the
hybrid soft computing paradigm in the field of intelligent
computing.
This book explains efficient solutions for segmenting the intensity
levels of different types of multilevel images. The authors present
hybrid soft computing techniques, which have advantages over
conventional soft computing solutions as they incorporate data
heterogeneity into the clustering/segmentation procedures. This is
a useful introduction and reference for researchers and graduate
students of computer science and electronics engineering,
particularly in the domains of image processing and computational
intelligence.
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Quantum Machine Learning (Hardcover)
Siddhartha Bhattacharyya, Indrajit Pan, Ashish Mani, Sourav De, Elizabeth Behrman, …
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R3,853
Discovery Miles 38 530
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Ships in 9 - 15 working days
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Quantum-enhanced machine learning refers to quantum algorithms that
solve tasks in machine learning, thereby improving a classical
machine learning method. Such algorithms typically require one to
encode the given classical dataset into a quantum computer, so as
to make it accessible for quantum information processing. After
this, quantum information processing routines can be applied and
the result of the quantum computation is read out by measuring the
quantum system. While many proposals of quantum machine learning
algorithms are still purely theoretical and require a full-scale
universal quantum computer to be tested, others have been
implemented on small-scale or special purpose quantum devices.
This book explains efficient solutions for segmenting the intensity
levels of different types of multilevel images. The authors present
hybrid soft computing techniques, which have advantages over
conventional soft computing solutions as they incorporate data
heterogeneity into the clustering/segmentation procedures. This is
a useful introduction and reference for researchers and graduate
students of computer science and electronics engineering,
particularly in the domains of image processing and computational
intelligence.
The book provides a platform for dealing with the flaws and
failings of the soft computing paradigm through different
manifestations. The different chapters highlight the necessity of
the hybrid soft computing methodology in general with emphasis on
several application perspectives in particular. Typical examples
include (a) Study of Economic Load Dispatch by Various Hybrid
Optimization Techniques, (b) An Application of Color Magnetic
Resonance Brain Image Segmentation by Para Optimus LG Activation
Function, (c) Hybrid Rough-PSO Approach in Remote Sensing Imagery
Analysis, (d) A Study and Analysis of Hybrid Intelligent Techniques
for Breast Cancer Detection using Breast Thermograms, and (e)
Hybridization of 2D-3D Images for Human Face Recognition. The
elaborate findings of the chapters enhance the exhibition of the
hybrid soft computing paradigm in the field of intelligent
computing.
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