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This book introduces readers to the current trends in using deep
learners and deep learner descriptors for medical applications. It
reviews the recent literature and presents a variety of medical
image and sound applications to illustrate the five major ways deep
learners can be utilized: 1) by training a deep learner from
scratch (chapters provide tips for handling imbalances and other
problems with the medical data); 2) by implementing transfer
learning from a pre-trained deep learner and extracting deep
features for different CNN layers that can be fed into simpler
classifiers, such as the support vector machine; 3) by fine-tuning
one or more pre-trained deep learners on an unrelated dataset so
that they are able to identify novel medical datasets; 4) by fusing
different deep learner architectures; and 5) by combining the above
methods to generate a variety of more elaborate ensembles. This
book is a value resource for anyone involved in engineering deep
learners for medical applications as well as to those interested in
learning more about the current techniques in this exciting field.
A number of chapters provide source code that can be used to
investigate topics further or to kick-start new projects.
This book introduces Local Binary Patterns (LBP), arguably one of
the most powerful texture descriptors, and LBP variants. This
volume provides the latest reviews of the literature and a
presentation of some of the best LBP variants by researchers at the
forefront of textual analysis research and research on LBP
descriptors and variants. The value of LBP variants is illustrated
with reported experiments using many databases representing a
diversity of computer vision applications in medicine, biometrics,
and other areas. There is also a chapter that provides an excellent
theoretical foundation for texture analysis and LBP in particular.
A special section focuses on LBP and LBP variants in the area of
face recognition, including thermal face recognition. This book
will be of value to anyone already in the field as well as to those
interested in learning more about this powerful family of texture
descriptors.
This book introduces Local Binary Patterns (LBP), arguably one of
the most powerful texture descriptors, and LBP variants. This
volume provides the latest reviews of the literature and a
presentation of some of the best LBP variants by researchers at the
forefront of textual analysis research and research on LBP
descriptors and variants. The value of LBP variants is illustrated
with reported experiments using many databases representing a
diversity of computer vision applications in medicine, biometrics,
and other areas. There is also a chapter that provides an excellent
theoretical foundation for texture analysis and LBP in particular.
A special section focuses on LBP and LBP variants in the area of
face recognition, including thermal face recognition. This book
will be of value to anyone already in the field as well as to those
interested in learning more about this powerful family of texture
descriptors.
The growth in the Bioinformatics and Computational Biology fields
over the last few years has been remarkable and the trend is to
increase its pace. In fact, the need for computational techniques
that can efficiently handle the huge amounts of data produced by
the new experimental techniques in Biology is still increasing
driven by new advances in Next Generation Sequencing, several types
of the so called omics data and image acquisition, just to name a
few. The analysis of the datasets that produces and its integration
call for new algorithms and approaches from fields such as
Databases, Statistics, Data Mining, Machine Learning, Optimization,
Computer Science and Artificial Intelligence. Within this scenario
of increasing data availability, Systems Biology has also been
emerging as an alternative to the reductionist view that dominated
biological research in the last decades. Indeed, Biology is more
and more a science of information requiring tools from the
computational sciences. In the last few years, we have seen the
surge of a new generation of interdisciplinary scientists that have
a strong background in the biological and computational sciences.
In this context, the interaction of researchers from different
scientific fields is, more than ever, of foremost importance
boosting the research efforts in the field and contributing to the
education of a new generation of Bioinformatics scientists.
PACBB'13 hopes to contribute to this effort promoting this fruitful
interaction. PACBB'13 technical program included 19 papers from a
submission pool of 32 papers spanning many different sub-fields in
Bioinformatics and Computational Biology. Therefore, the conference
will certainly have promoted the interaction of scientists from
diverse research groups and with a distinct background (computer
scientists, mathematicians, biologists). The scientific content
will certainly be challenging and will promote the improvement of
the work that is being developed by each of the participants.
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