Graph spectral image processing is the study of imaging data from a graph frequency perspective. Modern image sensors capture a wide range of visual data including high spatial resolution/high bit-depth 2D images and videos, hyperspectral images, light field images and 3D point clouds. The field of graph signal processing – extending traditional Fourier analysis tools such as transforms and wavelets to handle data on irregular graph kernels – provides new flexible computational tools to analyze and process these varied types of imaging data. Recent methods combine graph signal processing ideas with deep neural network architectures for enhanced performances, with robustness and smaller memory requirements.

The book is divided into two parts. The first is centered on the fundamentals of graph signal processing theories, including graph filtering, graph learning and graph neural networks. The second part details several imaging applications using graph signal processing tools, including image and video compression, 3D image compression, image restoration, point cloud processing, image segmentation and image classification, as well as the use of graph neural networks for image processing.

Format
EPUB
Protection
DRM Protected
Publication date
August 16, 2021
Publisher
Page count
320
Language
English
EPUB ISBN
9781119850816
Paper ISBN
9781789450286
File size
15 MB
EPUB
EPUB accessibility

Accessibility features

  • Described images
  • Table of contents navigation
Other features and hazards     keyboard_arrow_right
  • Contains indexes
  • Heading navigation
  • Includes the page numbers of the print version
  • There is a logical reading order to the text
subscribe

About Us

About De Marque Work @ De Marque Contact Us Terms of use Privacy Policy Feedbooks.com is operated by the Diffusion Champlain SASU company