Share
Recent Advances in Compressed Sensing: Discrete Uncertainty Principles and Fast Hyperspectral Imaging
Air Force Institute of Technology
(Author)
·
Penny Hill Press Inc
(Illustrated by)
·
Createspace Independent Publishing Platform
· Paperback
Recent Advances in Compressed Sensing: Discrete Uncertainty Principles and Fast Hyperspectral Imaging - Penny Hill Press Inc ; Air Force Institute of Technology
Choose the list to add your product or create one New List
✓ Product added successfully to the Wishlist.
Go to My Wishlists
Origin: U.S.A.
(Import costs included in the price)
It will be shipped from our warehouse between
Friday, August 09 and
Friday, August 16.
You will receive it anywhere in United Kingdom between 1 and 3 business days after shipment.
Synopsis "Recent Advances in Compressed Sensing: Discrete Uncertainty Principles and Fast Hyperspectral Imaging"
Compressed sensing is an important field with continuing advances in theory and applications. This book provides contributions to both theory and application. Much of the theory behind compressed sensing is based on uncertainty principles, which state that a signal cannot be concentrated in both time and frequency. We develop a new discrete uncertainty principle and use it to demonstrate a fundamental limitation of the demixing problem, and to provide a fast method of detecting sparse signals. The second half of this book focuses on a specific application of compressed sensing: hyperspectral imaging. Conventional hyperspectral platforms require long exposure times, which can limit their utility, and so we propose a compressed sensing platform to quickly sample hyperspectral data. We leverage certain combinatorial designs to build good coded apertures, and then we apply block orthogonal matching pursuit to quickly reconstruct the desired imagery.
- 0% (0)
- 0% (0)
- 0% (0)
- 0% (0)
- 0% (0)
All books in our catalog are Original.
The book is written in English.
The binding of this edition is Paperback.
✓ Producto agregado correctamente al carro, Ir a Pagar.