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This unique volume reviews the latest advances in domain adaptation
in the training of machine learning algorithms for visual
understanding, offering valuable insights from an international
selection of experts in the field. The text presents a diverse
selection of novel techniques, covering applications of object
recognition, face recognition, and action and event recognition.
Topics and features: reviews the domain adaptation-based machine
learning algorithms available for visual understanding, and
provides a deep metric learning approach; introduces a novel
unsupervised method for image-to-image translation, and a video
segment retrieval model that utilizes ensemble learning; proposes a
unique way to determine which dataset is most useful in the base
training, in order to improve the transferability of deep neural
networks; describes a quantitative method for estimating the
discrepancy between the source and target data to enhance image
classification performance; presents a technique for multi-modal
fusion that enhances facial action recognition, and a framework for
intuition learning in domain adaptation; examines an original
interpolation-based approach to address the issue of tracking model
degradation in correlation filter-based methods. This authoritative
work will serve as an invaluable reference for researchers and
practitioners interested in machine learning-based visual
recognition and understanding.
This unique volume reviews the latest advances in domain adaptation
in the training of machine learning algorithms for visual
understanding, offering valuable insights from an international
selection of experts in the field. The text presents a diverse
selection of novel techniques, covering applications of object
recognition, face recognition, and action and event recognition.
Topics and features: reviews the domain adaptation-based machine
learning algorithms available for visual understanding, and
provides a deep metric learning approach; introduces a novel
unsupervised method for image-to-image translation, and a video
segment retrieval model that utilizes ensemble learning; proposes a
unique way to determine which dataset is most useful in the base
training, in order to improve the transferability of deep neural
networks; describes a quantitative method for estimating the
discrepancy between the source and target data to enhance image
classification performance; presents a technique for multi-modal
fusion that enhances facial action recognition, and a framework for
intuition learning in domain adaptation; examines an original
interpolation-based approach to address the issue of tracking model
degradation in correlation filter-based methods. This authoritative
work will serve as an invaluable reference for researchers and
practitioners interested in machine learning-based visual
recognition and understanding.
This book comprises chapters on key problems in machine learning
and signal processing arenas. The contents of the book are a result
of a 2014 Workshop on Machine Intelligence and Signal Processing
held at the Indraprastha Institute of Information Technology.
Traditionally, signal processing and machine learning were
considered to be separate areas of research. However in recent
times the two communities are getting closer. In a very abstract
fashion, signal processing is the study of operator design. The
contributions of signal processing had been to device operators for
restoration, compression, etc. Applied Mathematicians were more
interested in operator analysis. Nowadays signal processing
research is gravitating towards operator learning - instead of
designing operators based on heuristics (for example wavelets), the
trend is to learn these operators (for example dictionary
learning). And thus, the gap between signal processing and machine
learning is fast converging. The 2014 Workshop on Machine
Intelligence and Signal Processing was one of the few unique events
that are focused on the convergence of the two fields. The book is
comprised of chapters based on the top presentations at the
workshop. This book has three chapters on various topics of
biometrics - two are on face detection and one on iris recognition;
all from top researchers in their field. There are four chapters on
different biomedical signal / image processing problems. Two of
these are on retinal vessel classification and extraction; one on
biomedical signal acquisition and the fourth one on region
detection. There are three chapters on data analysis - a topic
gaining immense popularity in industry and academia. One of these
shows a novel use of compressed sensing in missing sales data
interpolation. Another chapter is on spam detection and the third
one is on simple one-shot movie rating prediction. Four other
chapters cover various cutting edge miscellaneous topics on
character recognition, software effort prediction, speech
recognition and non-linear sparse recovery. The contents of this
book will prove useful to researchers, professionals and students
in the domains of machine learning and signal processing.
Deep Learning is now synonymous with applied machine learning. Many
technology giants (e.g. Google, Microsoft, Apple, IBM) as well as
start-ups are focusing on deep learning-based techniques for data
analytics and artificial intelligence. This technology applies
quite strongly to biometrics. This book covers topics in deep
learning, namely convolutional neural networks, deep belief network
and stacked autoencoders. The focus is also on the application of
these techniques to various biometric modalities: face, iris,
palmprint, and fingerprints, while examining the future trends in
deep learning and biometric research. Contains chapters written by
authors who are leading researchers in biometrics. Presents a
comprehensive overview on the internal mechanisms of deep learning.
Discusses the latest developments in biometric research. Examines
future trends in deep learning and biometric research. Provides
extensive references at the end of each chapter to enhance further
study.
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