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The subject of Partial Differential Equations (PDEs) which first
emerged in the 18th century holds an exciting and special position
in the applications relating to the mathematical modelling of
physical phenomena. The subject of PDEs has been developed by major
names in Applied Mathematics such as Euler, Legendre, Laplace and
Fourier and has applications to each and every physical phenomenon
known to us e.g. fluid flow, elasticity, electricity and magnetism,
weather forecasting and financial modelling. This book introduces
the recent developments of PDEs in the field of Geometric Design
particularly for computer based design and analysis involving the
geometry of physical objects. Starting from the basic theory
through to the discussion of practical applications the book
describes how PDEs can be used in the area of Computer Aided Design
and Simulation Based Design. Extensive examples with real life
applications of PDEs in the area of Geometric Design are discussed
in the book.
Deep learning is an artificially intelligent entity that teaches
itself and can be utilized to make predictions. Deep learning
mimics the human brain and provides learned solutions addressing
many challenging problems in the area of visual computing. From
object recognition to image classification for diagnostics, deep
learning has shown the power of artificial deep neural networks in
solving real world visual computing problems with super-human
accuracy. The introduction of deep learning into the field of
visual computing has meant to be the death of most of the
traditional image processing and computer vision techniques. Today,
deep learning is considered to be the most powerful, accurate,
efficient and effective method with the potential to solve many of
the most challenging problems in visual computing. This book
provides an insight into deep machine learning and the challenges
in visual computing to tackle the novel method of machine learning.
It introduces readers to the world of deep neural network
architectures with easy-to-understand explanations. From face
recognition to image classification for diagnosis of cancer, the
book provides unique examples of solved problems in applied visual
computing using deep learning. Interested and enthusiastic readers
of modern machine learning methods will find this book easy to
follow. They will find it a handy guide for designing and
implementing their own projects in the field of visual computing.
Deep learning is an artificially intelligent entity that teaches
itself and can be utilized to make predictions. Deep learning
mimics the human brain and provides learned solutions addressing
many challenging problems in the area of visual computing. From
object recognition to image classification for diagnostics, deep
learning has shown the power of artificial deep neural networks in
solving real world visual computing problems with super-human
accuracy. The introduction of deep learning into the field of
visual computing has meant to be the death of most of the
traditional image processing and computer vision techniques. Today,
deep learning is considered to be the most powerful, accurate,
efficient and effective method with the potential to solve many of
the most challenging problems in visual computing. This book
provides an insight into deep machine learning and the challenges
in visual computing to tackle the novel method of machine learning.
It introduces readers to the world of deep neural network
architectures with easy-to-understand explanations. From face
recognition to image classification for diagnosis of cancer, the
book provides unique examples of solved problems in applied visual
computing using deep learning. Interested and enthusiastic readers
of modern machine learning methods will find this book easy to
follow. They will find it a handy guide for designing and
implementing their own projects in the field of visual computing.
The subject of Partial Differential Equations (PDEs) which first
emerged in the 18th century holds an exciting and special position
in the applications relating to the mathematical modelling of
physical phenomena. The subject of PDEs has been developed by major
names in Applied Mathematics such as Euler, Legendre, Laplace and
Fourier and has applications to each and every physical phenomenon
known to us e.g. fluid flow, elasticity, electricity and magnetism,
weather forecasting and financial modelling. This book introduces
the recent developments of PDEs in the field of Geometric Design
particularly for computer based design and analysis involving the
geometry of physical objects. Starting from the basic theory
through to the discussion of practical applications the book
describes how PDEs can be used in the area of Computer Aided Design
and Simulation Based Design. Extensive examples with real life
applications of PDEs in the area of Geometric Design are discussed
in the book.
In this book, the authors discuss the recent developments in
computational techniques for automated non-invasive facial emotion
detection and analysis with particular focus on the smile. By way
of applications, they discuss how genuine and non-genuine smiles
can be inferred, how gender is encoded in a smile and how it is
possible to use the dynamics of a smile itself as a biometric
feature. It is often said that the face is a window to the soul.
Bearing a metaphor of this nature in mind, one might find it
intriguing to understand, if any, how the physical, behavioural as
well as emotional characteristics of a person could be decoded from
the face itself. With the increasing deductive power of machine
learning techniques, it is becoming plausible to address such
questions through the development of appropriate computational
frameworks. Though there are as many as over twenty five categories
of emotions one could express, regardless of the ethnicity, gender
or social class, across humanity, there exist six common emotions -
namely happiness, sadness, surprise, fear, anger and disgust - all
of which can be inferred from facial expressions. Of these facial
expressions, the smile is the most prominent in social
interactions. The smile bears important ramifications with beliefs
such as it makes one more attractive, less stressful in upsetting
situations and employers tending to promote people who smile often.
Even pockets of scientific research appear to be forthcoming to
validate such beliefs and claims, e.g. the smile intensity observed
in photographs positively correlates with longevity, the ability to
win a fight and whether a couple would stay married. Thus, it
appears that many important personality traits are encoded in the
smile itself. Therefore, the deployment of computer based
algorithms for studying the human smiles in greater detail is a
plausible avenue for which the authors have dedicated the
discussions in this book.
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