Multispectral Satellite Image Understanding: From Land Classification to Building and Road Detection

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Rapid development of remote sensing technology in recent years has greatly increased availability of high-resolution satellite image data. However, detailed analysis of such large data sets also requires innovative new techniques in image and signal processing.

This important text/reference presents a comprehensive review of image processing methods, for the analysis of land use in residential areas. Combining a theoretical framework with highly practical applications, making use of both well-known methods and cutting-edge techniques in computer vision, the book describes a system for the effective detection of single houses and streets in very high resolution.

Topics and features:

  • With a Foreword by Prof. Dr. Peter Reinartz of the German Aerospace Center
  • Provides end-of-chapter summaries and review questions
  • Presents a detailed review on remote sensing satellites
  • Examines the multispectral information that can be obtained from satellite images, with a focus on vegetation and shadow-water indices
  • Investigates methods for land-use classification, introducing precise graph theoretical measures over panchromatic images
  • Addresses the problem of detecting residential regions
  • Describes a house and street network-detection subsystem
  • Concludes with a summary of the key ideas covered in the book

This pioneering work on automated satellite and aerial image-understanding systems will be of great interest to researchers in both remote sensing and computer vision, highlighting the benefit of interdisciplinary collaboration between the two communities. Urban planners and policy makers will also find considerable value in the proposed system.

Dr. Cem Ünsalan is an Associate Professor in the Department of Electrical and Electronics Engineering at Yeditepe University, Istanbul, Turkey. Dr. Kim Boyer is Professor and Head of the Department of Electrical, Computer, and Systems Engineering at Rensselaer Polytechnic Institute, Troy, NY, USA.

Author(s): Assoc. Prof. Cem Ünsalan, Prof. Kim L. Boyer (auth.)
Series: Advances in Computer Vision and Pattern Recognition
Edition: 1
Publisher: Springer-Verlag London
Year: 2011

Language: English
Pages: 186
Tags: Image Processing and Computer Vision; Pattern Recognition

Front Matter....Pages I-XVII
Front Matter....Pages 5-5
Introduction....Pages 1-4
Front Matter....Pages 5-5
Remote Sensing Satellites and Airborne Sensors....Pages 7-15
Front Matter....Pages 17-17
Linearized Vegetation Indices....Pages 19-39
Linearized Shadow and Water Indices....Pages 41-46
Front Matter....Pages 47-47
Review on Land Use Classification....Pages 49-64
Land Use Classification using Structural Features....Pages 65-81
Land Use Classification via Multispectral Information....Pages 83-98
Graph Theoretical Measures for Land Development....Pages 99-120
Front Matter....Pages 121-121
Feature Based Grouping to Detect Suburbia....Pages 123-129
Detecting Residential Regions by Graph-Theoretical Measures....Pages 131-136
Front Matter....Pages 137-137
Review on Building and Road Detection....Pages 139-144
House and Street Network Detection in Residential Regions....Pages 145-176
Front Matter....Pages 177-177
Final Comments....Pages 179-182
Back Matter....Pages 183-185