![]() |
Welcome to Loot.co.za!
Sign in / Register |Wishlists & Gift Vouchers |Help | Advanced search
|
Your cart is empty |
||
Showing 1 - 2 of 2 matches in All Departments
This useful textbook/reference presents an accessible primer on the fundamentals of image texture analysis, as well as an introduction to the K-views model for extracting and classifying image textures. Divided into three parts, the book opens with a review of existing models and algorithms for image texture analysis, before delving into the details of the K-views model. The work then concludes with a discussion of popular deep learning methods for image texture analysis. Topics and features: provides self-test exercises in every chapter; describes the basics of image texture, texture features, and image texture classification and segmentation; examines a selection of widely-used methods for measuring and extracting texture features, and various algorithms for texture classification; explains the concepts of dimensionality reduction and sparse representation; discusses view-based approaches to classifying images; introduces the template for the K-views algorithm, as well as a range of variants of this algorithm; reviews several neural network models for deep machine learning, and presents a specific focus on convolutional neural networks. This introductory text on image texture analysis is ideally suitable for senior undergraduate and first-year graduate students of computer science, who will benefit from the numerous clarifying examples provided throughout the work.
This useful textbook/reference presents an accessible primer on the fundamentals of image texture analysis, as well as an introduction to the K-views model for extracting and classifying image textures. Divided into three parts, the book opens with a review of existing models and algorithms for image texture analysis, before delving into the details of the K-views model. The work then concludes with a discussion of popular deep learning methods for image texture analysis. Topics and features: provides self-test exercises in every chapter; describes the basics of image texture, texture features, and image texture classification and segmentation; examines a selection of widely-used methods for measuring and extracting texture features, and various algorithms for texture classification; explains the concepts of dimensionality reduction and sparse representation; discusses view-based approaches to classifying images; introduces the template for the K-views algorithm, as well as a range of variants of this algorithm; reviews several neural network models for deep machine learning, and presents a specific focus on convolutional neural networks. This introductory text on image texture analysis is ideally suitable for senior undergraduate and first-year graduate students of computer science, who will benefit from the numerous clarifying examples provided throughout the work.
|
You may like...
CompTIA Data+ DA0-001 Exam Cram
Akhil Behl, Sivasubramanian
Digital product license key
R1,024
Discovery Miles 10 240
Finding Source Code on the Web for Remix…
Susan Elliott Sim, Rosalva E. Gallardo-Valencia
Hardcover
Trust Management IV - 4th IFIP WG 11.11…
Masakatsu Nishigaki, Audun Josang, …
Hardcover
R1,435
Discovery Miles 14 350
Managed Grids and Cloud Systems in the…
Simon C. Lin, Eric Yen
Hardcover
R5,340
Discovery Miles 53 400
Human-Computer Interaction - Second IFIP…
Peter Forbrig, Fabio Paterno, …
Hardcover
R1,445
Discovery Miles 14 450
Peer-to-Peer Computing - Principles and…
Quang Hieu Vu, Mihai Lupu, …
Hardcover
R2,830
Discovery Miles 28 300
A Survey on Coordinated Power Management…
Thant Zin Oo, Nguyen H. Tran, …
Hardcover
R3,281
Discovery Miles 32 810
|