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Medical images can highlight differences between healthy tissue and
unhealthy tissue and these images can then be assessed by a
healthcare professional to identify the stage and spread of a
disease so a treatment path can be established. With machine
learning techniques becoming more prevalent in healthcare,
algorithms can be trained to identify healthy or unhealthy tissues
and quickly differentiate between the two. Statistical models can
be used to process numerous images of the same type in a fraction
of the time it would take a human to assess the same quantity,
saving time and money in aiding practitioners in their assessment.
The book discusses feature extraction processes, reviews deep
learning methods for medical segmentation tasks, outlines
optimisation algorithms and regularisation techniques, illustrates
image classification and retrieval systems, and highlights text
recognition tools, game theory, and the detection of misinformation
for improving healthcare provision. This edited book provides state
of the art research on the integration of new and emerging
technologies for the medical imaging processing and analysis
fields. This book outlines future directions for increasing the
efficiency of conventional imaging models to achieve better
performance in diagnoses as well as in the characterization of
complex pathological conditions. The book is aimed at a readership
of researchers and scientists in both academia and industry in
computer science and engineering, machine learning, image
processing, and healthcare technologies and those in related
fields.
The objective of this SpringerBrief is to present security
architectures and incentive mechanisms to realize system
availability for D2D communications. D2D communications enable
devices to communicate directly, improving resource utilization,
enhancing user's throughput, extending battery lifetime, etc.
However, due to the open nature of D2D communications, there are
two substantial technical challenges when applied to large-scale
applications, that is, security and availability which is
demonstrated in this book. This SpringerBrief proposes a secure
data sharing protocol, which merges the advantages of public key
cryptography and symmetric encryption, to achieve data security in
D2D communications. Furthermore, a joint framework involving both
the physical and application layer security technologies is
proposed for multimedia service over D2D communications thus the
scalable security service can be achieved without changing the
current communication framework. Additionally, as the system
availability largely depends on the cooperation degree of the
users, a graph-theory based cooperative content dissemination
scheme is proposed to achieve maximal Quality of Experience (QoE)
with fairness and efficiency. This SpringerBrief will be a valuable
resource for advanced-level students and researchers who want to
learn more about cellular networks.
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Green Communication and Networking - First International Conference, GreeNets 2011, Colmar, France, October 5-7, 2011, Revised Selected Papers (Paperback, 2012 ed.)
Joel Jose P C Rodrigues, Liang Zhou, Min Chen, Aravind Kailas
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R1,385
Discovery Miles 13 850
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Ships in 18 - 22 working days
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This book constitutes the thoroughly refereed post-conference
proceedings of the First International Joint Conference on Green
Communication and Networking (GreeNets 2011), held in Colmar,
France, on October 5-7, 2011. The 16 revised full papers presented
were carefully selected and reviewed from numerous submissions and
explain the scope and challenges of designing, building, and
deploying GreeNets. In this regard, the conference aims to
establish a forum to bring together research professionals from
diverse fields including green mobile networks, system
architectures, networking & communication protocols,
applications, test-bed and prototype, traffic balance and
energy-efficient cooperation transmission, system and application
issues related to GreenNets.
This SpringerBrief discusses the most recent research in the field
of multimedia QoE evaluation, with a focus on how to evaluate
subjective multimedia QoE problems from objective techniques.
Specifically, this SpringerBrief starts from a comprehensive
overview of multimedia QoE definition, its influencing factors,
traditional modeling and prediction methods. Subsequently, the
authors introduce the procedure of multimedia service data
collection, preprocessing and feature extractions. Then, describe
several proposed multimedia QoE modeling and prediction techniques
in details. Finally, the authors illustrate how to implement and
demonstrate multimedia QoE evaluation in the big data platform.
This SpringerBrief provides readers with a clear picture on how to
make full use of multimedia service data to realize multimedia QoE
evaluation. With the exponential growth of the Internet
technologies, multimedia services become immensely popular. Users
can enjoy multimedia services from operators or content providers
by TV, computers and mobile devices. User experience is important
for network operators and multimedia content providers. Traditional
QoS (quality of service) can not entirely and accurately describe
user experience. It is natural to research the quality of
multimedia service from the users' perspective, defined as
multimedia quality of experience (QoE). However, multimedia QoE
evaluation is difficult, because user experience is abstract and
subjective, hard to quantify and measure. Moreover, the explosion
of multimedia service and emergence of big data, all call for a new
and better understanding of multimedia QoE. This SpringerBrief
targets advanced-level students, professors and researchers
studying and working in the fields of multimedia communications and
information processing. Professionals, industry managers, and
government research employees working in these same fields will
also benefit from this SpringerBrief.
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