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This book serves as a current resource for Photoplethysmogram (PPG)
signal analysis using MATLAB®. This technology is critical in the
evaluation of medical and diagnostic data utilized in mobile
devices. Information and methodologies outlined in the text can be
used to learn the empirical and experimental process (including
data collection, data analysis, feature extractions, and more) from
inception to conclusion. This book also discusses how introduced
methodologies can be used and applied as tools that will teach the
user how to validate, test, and simulate developed algorithms
before implementing and deploying the algorithms on wearable,
battery-driven, or point-of-care devices.
This book serves as a current resource for Photoplethysmogram (PPG)
signal analysis using MATLAB (R). This technology is critical in
the evaluation of medical and diagnostic data utilized in mobile
devices. Information and methodologies outlined in the text can be
used to learn the empirical and experimental process (including
data collection, data analysis, feature extractions, and more) from
inception to conclusion. This book also discusses how introduced
methodologies can be used and applied as tools that will teach the
user how to validate, test, and simulate developed algorithms
before implementing and deploying the algorithms on wearable,
battery-driven, or point-of-care devices.
How does the computer learn to understand what it sees? Deep
Learning for Vision Systems answers that by applying deep learning
to computer vision. Using only high school algebra, this book
illuminates the concepts behind visual intuition. You'll understand
how to use deep learning architectures to build vision system
applications for image generation and facial recognition. Summary
Computer vision is central to many leading-edge innovations,
including self-driving cars, drones, augmented reality, facial
recognition, and much, much more. Amazing new computer vision
applications are developed every day, thanks to rapid advances in
AI and deep learning (DL). Deep Learning for Vision Systems teaches
you the concepts and tools for building intelligent, scalable
computer vision systems that can identify and react to objects in
images, videos, and real life. With author Mohamed Elgendy's expert
instruction and illustration of real-world projects, you'll finally
grok state-of-the-art deep learning techniques, so you can build,
contribute to, and lead in the exciting realm of computer vision!
Purchase of the print book includes a free eBook in PDF, Kindle,
and ePub formats from Manning Publications. About the technology
How much has computer vision advanced? One ride in a Tesla is the
only answer you'll need. Deep learning techniques have led to
exciting breakthroughs in facial recognition, interactive
simulations, and medical imaging, but nothing beats seeing a car
respond to real-world stimuli while speeding down the highway.
About the book How does the computer learn to understand what it
sees? Deep Learning for Vision Systems answers that by applying
deep learning to computer vision. Using only high school algebra,
this book illuminates the concepts behind visual intuition. You'll
understand how to use deep learning architectures to build vision
system applications for image generation and facial recognition.
What's inside Image classification and object detection Advanced
deep learning architectures Transfer learning and generative
adversarial networks DeepDream and neural style transfer Visual
embeddings and image search About the reader For intermediate
Python programmers. About the author Mohamed Elgendy is the VP of
Engineering at Rakuten. A seasoned AI expert, he has previously
built and managed AI products at Amazon and Twilio. Table of
Contents PART 1 - DEEP LEARNING FOUNDATION 1 Welcome to computer
vision 2 Deep learning and neural networks 3 Convolutional neural
networks 4 Structuring DL projects and hyperparameter tuning PART 2
- IMAGE CLASSIFICATION AND DETECTION 5 Advanced CNN architectures 6
Transfer learning 7 Object detection with R-CNN, SSD, and YOLO PART
3 - GENERATIVE MODELS AND VISUAL EMBEDDINGS 8 Generative
adversarial networks (GANs) 9 DeepDream and neural style transfer
10 Visual embeddings
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