|
Showing 1 - 6 of
6 matches in All Departments
Digital technology has enabled a number of internet-enabled devices
that generate huge volumes of data from different systems. This
large amount of heterogeneous data requires efficient data
collection, processing, and analytical methods. Deep Learning is
one of the latest efficient and feasible solutions that enable
smart devices to function independently with a decision-making
support system. Convergence of Deep Learning and Internet of
Things: Computing and Technology contributes to technology and
methodology perspectives in the incorporation of deep learning
approaches in solving a wide range of issues in the IoT domain to
identify, optimize, predict, forecast, and control emerging IoT
systems. Covering topics such as data quality, edge computing, and
attach detection and prediction, this premier reference source is a
comprehensive resource for electricians, communications
specialists, mechanical engineers, civil engineers, computer
scientists, students and educators of higher education, librarians,
researchers, and academicians.
Increase in consumer awareness of nutritional habits has placed
automatic food analysis in the spotlight in recent years. However,
food-logging is cumbersome and requires sufficient knowledge of the
food item consumed. Additionally, keeping track of every meal can
become a tedious task. Accurately documenting dietary caloric
intake is crucial to manage weight loss, but also presents
challenges because most of the current methods for dietary
assessment must rely on memory to recall foods eaten. Food
understanding from digital media has become a challenge with
important applications in many different domains. Substantial
research has demonstrated that digital imaging accurately estimates
dietary intake in many environments and it has many advantages over
other methods. However, how to derive the food information
effectively and efficiently remains a challenging and open research
problem. The provided recommendations could be based on calorie
counting, healthy food and specific nutritional composition. In
addition, if we also consider a system able to log the food
consumed by every individual along time, it could provide
health-related recommendations in the long-term. Computer Vision
specialists have developed new methods for automatic food intake
monitoring and food logging. Fourth Industrial Revolution [4.0 IR]
technologies such as deep learning and computer vision robotics are
key for sustainable food understanding. The need for AI based
technologies that allow tracking of physical activities and
nutrition habits are rapidly increasing and automatic analysis of
food images plays an important role. Computer vision and image
processing offers truly impressive advances to various applications
like food analytics and healthcare analytics and can aid patients
in keeping track of their calorie count easily by automating the
calorie counting process. It can inform the user about the number
of calories, proteins, carbohydrates, and other nutrients provided
by each meal. The information is provided in real-time and thus
proves to be an efficient method of nutrition tracking and can be
shared with the dietician over the internet, reducing healthcare
costs. This is possible by a system made up of, IoT sensors,
Cloud-Fog based servers and mobile applications. These systems can
generate data or images which can be analyzed using machine
learning algorithms. Image Based Computing for Food and Health
Analytics covers the current status of food image analysis
and presents computer vision and image processing based solutions
to enhance and improve the accuracy of current measurements of
dietary intake. Many solutions are presented to improve the
accuracy of assessment by analyzing health images, data and food
industry based images captured by mobile devices. Key technique
innovations based on Artificial Intelligence and deep
learning-based food image recognition algorithms are also
discussed. This book examines the usage of 4.0 industrial
revolution technologies such as computer vision and artificial
intelligence in the field of healthcare and food industry,
providing a comprehensive understanding of computer vision and
intelligence methodologies which tackles the main challenges
of food and health processing. Additionally, the text
focuses on the employing sustainable 4 IR technologies through
which consumers can attain the necessary diet and nutrients and can
actively monitor their health. In focusing specifically on the food
industry and healthcare analytics, it serves as a single source for
multidisciplinary information involving AI and vision techniques in
the food and health sector. Current advances such as Industry 4.0
and Fog-Cloud based solutions are covered in full, offering
readers a fully rounded view of these rapidly advancing health and
food analysis systems.Â
Emotional AI and Human-AI Interactions in Social Networking makes
readers aware of recent progress in this integrated discipline.
Filling the existing vacuum in research in artificial intelligence
with the application of social science, this book provides in-depth
knowledge of human-AI interactions with social networking and
increased use of the internet. Chapters integrating Emotional
Artificial Intelligence, examining behavioral interventions,
compassion, education, and healthcare, as well as social cognitive
networking, including social brain networks, play a pivotal role in
enhancing interdisciplinary studies in the field of social
neuroscience and Emotional AI. This volume is a must for those
wanting to dive into this exciting field of social neuroscience AI.
Digital technology has enabled a number of internet-enabled devices
that generate huge volumes of data from different systems. This
large amount of heterogeneous data requires efficient data
collection, processing, and analytical methods. Deep Learning is
one of the latest efficient and feasible solutions that enable
smart devices to function independently with a decision-making
support system. Convergence of Deep Learning and Internet of
Things: Computing and Technology contributes to technology and
methodology perspectives in the incorporation of deep learning
approaches in solving a wide range of issues in the IoT domain to
identify, optimize, predict, forecast, and control emerging IoT
systems. Covering topics such as data quality, edge computing, and
attach detection and prediction, this premier reference source is a
comprehensive resource for electricians, communications
specialists, mechanical engineers, civil engineers, computer
scientists, students and educators of higher education, librarians,
researchers, and academicians.
Advances in Computational Techniques for Biomedical Image Analysis:
Methods and Applications focuses on post-acquisition challenges
such as image enhancement, detection of edges and objects, analysis
of shape, quantification of texture and sharpness, and pattern
analysis. It discusses the archiving and transfer of images,
presents a selection of techniques for the enhancement of contrast
and edges, for noise reduction and for edge-preserving smoothing.
It examines various feature detection and segmentation techniques,
together with methods for computing a registration or normalization
transformation. Advances in Computational Techniques for Biomedical
Image Analysis: Method and Applications is ideal for researchers
and post graduate students developing systems and tools for
health-care systems.
|
You may like...
The Flash
Ezra Miller, Michael Keaton, …
Blu-ray disc
R198
R158
Discovery Miles 1 580
Higher
Michael Buble
CD
(1)
R459
Discovery Miles 4 590
Braai
Reuben Riffel
Paperback
R495
R359
Discovery Miles 3 590
Loot
Nadine Gordimer
Paperback
(2)
R383
R310
Discovery Miles 3 100
|