+44 1243 811334
            Contact Us
IM Publications
 
Search: Advanced search
Login - Register - Order history
Cart is empty
 Home |
 Mass Spectrometry |
 NIR Spectroscopy |
 NMR |
 Raman Spectroscopy |
 Surface Analysis |
 Consumer Titles |
 
       IM Publications :: NIR Spectroscopy :: Multivariate Image Analysis

 

Bestsellers
1. A User-Friendly Guide to Multivariate Calibration and Classification

2. Interpreting Diffuse Reflectance and Transmittance: A Theoretical Introduction to Absorption Spectroscopy of Scattering Materials

3. Combined JNIRS and NIR news: Print and Online 2010

4. NIR news Print + online 2010

5. Multivariate Data Analysis-in Practice 5 Edition + CD



Latest IMP News
04-06-2010
View June/May issue of NIR news online.

Previous news

Your e-mail:
Subscribe 


Shopping cart
Cart is empty

View cart
Checkout
Order history


Multivariate Image Analysis
Multivariate Image Analysis
Click to enlarge   Click to enlarge
The quantity of visual information encountered experimentally by scientists across a wide range of fields has grown dramatically in recent years. As a result, the importance of dealing with multivariate data (data obtained by measuring a number of different quantities simultaneously) present in images has become much more important, and the requirement for techniques which are able to manage and analyse these data has become crucial for the practising scientist in many diverse disciplines.

Multivariate Image Analysis gives the reader a sound understanding of the importance of, and the principles behind, multivariate image analysis. A short introduction to the image and its perception is followed by a discussion of some popular techniques of multivariate image formation, taken from fields such as microscopy, remote sensing and medical imaging. The principles behind one of the key multivariate techniques, principal components analysis, are thoroughly explained without going too far into the theory: The important concepts of residual visualization and local modelling are explained. Throughout, the power of the techniques discussed is demonstrated with the use of simple worked examples to illustrate the concepts, and more complex examples to indicate to the reader how a complete analysis would be carried out. The book is richly illustrated with colour images.

Multivariate Image Analysis is of great interest to all those involved in the analysis of data contained in complex images. The techniques discussed are widely applicable, and are finding use in fields such as microscopy, satellite, remote sensing, medical imaging, radiology, analytical chemistry, spectroscopy and astronomy

  10%
 
 
Contents

  • Introduction
  • Images in the Natural Sciences and in Chemistry
  • Medical Diagnostic Tools: Magnetic Resonance Imaging
  • Principal Component Analysis with Basic Matrix Algebra and Statistics
  • Preprocessing and Transformation of Images
  • Principal Component Analysis on Multivariate Images
  • Principal Component Analysis on Covariance and Correlation Matrices of Multivariate Images
  • Visualization in Score Plots
  • The Residual and Residual Images
  • Local Models and Sampling
  • Miscellaneous Examples
  • Multivariate Image Analysis Applied to Magnetic Resonance Images
  • Multivariate Image Regression
  • Epilog


Details
 
Author Paul Geladi and Hans Grahn
Binding Hardback
Published 2004
No. Pages xiii + 316
Availability In stock for immediate despatch

Price:

£211.50

Options
 
Quantity

Add to cart
        


 

 

 
 

Shopping

Search Products
Mass Spectrometry
NIR Spectroscopy
NMR
Raman Spectroscopy
Surface Analysis
Consumer Titles
Buy a Journal Article

Customer Service

Contact Us
Privacy
Terms & Conditions
Shipping & Returns
How to Order

Company Info

IM Publications Main Site
About IM Publications
Our other sites:
NIR Publications
Journal of Spectral Imaging
Nanotechnology World
Spectroscopy Asia
Spectroscopy Europe
Goodwood Remembered

Stay Informed

Product Updates
Table of Contents Alerts


Payment Methods

      Web design Sussex by Samson Web Design   Copyright © 2008-2010 IM Publications