Over the last fifty years, a large number of spaceborne and airborne sensors have been employed to gather information regarding the earth's surface and environment. As sensor technology continues to advance, remote sensing data with improved temporal, spectral, and spatial resolution is becoming more readily available. This widespread availability of enormous amounts of data has necessitated the development of efficient data processing techniques for a wide variety of applications. In particular, great strides have been made in the development of digital image processing techniques for remote sensing data. The goal has been efficient handling of vast amounts of data, fusion of data from diverse sensors, classification for image interpretation, and development of user-friendly products that allow rich visualization. This book presents some new algorithms that have been developed for high dimensional datasets, such as multispectral and hyperspectral imagery. The contents of the book are based primarily on research carried out by some members and alumni of the Sensor Fusion Laboratory at Syracuse University.
Author(s): Professor Dr. Pramod K. Varshney, Dr. Manoj K. Arora (auth.)
Edition: 1
Publisher: Springer-Verlag Berlin Heidelberg
Year: 2004
Language: English
Pages: 323
Tags: Geographical Information Systems/Cartography;Earth Sciences, general;Optics, Optoelectronics, Plasmonics and Optical Devices;Electrical Engineering;Ecotoxicology
Front Matter....Pages I-XV
Introduction....Pages 1-8
Front Matter....Pages 9-9
Hyperspectral Sensors and Applications....Pages 11-49
Overview of Image Processing....Pages 51-85
Front Matter....Pages 87-87
Mutual Information: A Similarity Measure for Intensity Based Image Registration....Pages 89-108
Independent Component Analysis....Pages 109-132
Support Vector Machines....Pages 133-157
Markov Random Field Models....Pages 159-178
Front Matter....Pages 179-179
MI Based Registration of Multi-Sensor and Multi-Temporal Images....Pages 181-198
Feature Extraction from Hyperspectral Data Using ICA....Pages 199-216
Hyperspectral Classification Using ICA Based Mixture Model....Pages 217-236
Support Vector Machines for Classification of Multi- and Hyperspectral Data....Pages 237-255
An MRF Model Based Approach for Sub-pixel Mapping from Hyperspectral Data....Pages 257-277
Image Change Detection and Fusion Using MRF Models....Pages 279-307
Back Matter....Pages 309-323