A Land Use and Land Cover Classification System for Use with Remote Sensor Data

A Land Use and Land Cover Classification System for Use with Remote Sensor Data
Author: James Richard Anderson
Publsiher: Unknown
Total Pages: 36
Release: 1976
Genre: Land cover
ISBN: UIUC:30112055353848

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A Land Use and Land Cover Classification System for Use with Remote Sensor Data

A Land Use and Land Cover Classification System for Use with Remote Sensor Data
Author: James Richard Anderson
Publsiher: Unknown
Total Pages: 36
Release: 1976
Genre: Land cover
ISBN: ERDC:35925000333200

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A Land use Classification System for Use with Remote Sensor Data

A Land use Classification System for Use with Remote Sensor Data
Author: James Richard Anderson,Ernest E. Hardy,John T. Roach
Publsiher: Unknown
Total Pages: 22
Release: 1972
Genre: Land use
ISBN: UCAL:C3059108

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Remote Sensing of Land Use and Land Cover

Remote Sensing of Land Use and Land Cover
Author: Chandra P. Giri
Publsiher: CRC Press
Total Pages: 481
Release: 2012-05-02
Genre: Technology & Engineering
ISBN: 9781420070743

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Filling the need for a comprehensive book that covers both theory and application, Remote Sensing of Land Use and Land Cover: Principles and Applications provides a synopsis of how remote sensing can be used for land-cover characterization, mapping, and monitoring from the local to the global scale. With contributions by leading scientists from around the world, this well-structured volume offers an international perspective on the science, technologies, applications, and future needs of remote sensing of land cover and land use. After an overview of the key concepts and history of land-use and land-cover mapping, the book discusses the relationship between land cover and land use and addresses the land-cover classification system. It then presents state-of-the-art methods and techniques in data acquisition, preprocessing, image interpretation, and accuracy assessment for land-use and land-cover characterization and mapping. Case studies from around the world illustrate land-cover applications at global, continental, and national scales. These examples use multiple data sources and provide in-depth understanding of land cover and land-cover dynamics in multiple spatial, thematic, and temporal resolutions. Looking to the future, the book also identifies new frontiers in land-cover mapping and forecasting. The availability and accessibility of accurate and timely land-cover data sets play an important role in many global change studies, highlighting the need for better land-use and land-cover change information at multiple scales. A synthesis of current knowledge in remote sensing of land-use and land-cover science, this book promotes more effective use of Earth observation data and technology to assess, monitor, and manage land resources.

Historical Land Use Land Cover Classification Using Remote Sensing

Historical Land Use Land Cover Classification Using Remote Sensing
Author: Wafi Al-Fares
Publsiher: Springer Science & Business Media
Total Pages: 204
Release: 2013-06-25
Genre: Science
ISBN: 9783319006246

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Although the development of remote sensing techniques focuses greatly on construction of new sensors with higher spatial and spectral resolution, it is advisable to also use data of older sensors (especially, the LANDSAT-mission) when the historical mapping of land use/land cover and monitoring of their dynamics are needed. Using data from LANDSAT missions as well as from Terra (ASTER) Sensors, the authors shows in his book maps of historical land cover changes with a focus on agricultural irrigation projects. The kernel of this study was whether, how and to what extent applying the various remotely sensed data that were used here, would be an effective approach to classify the historical and current land use/land cover, to monitor the dynamics of land use/land cover during the last four decades, to map the development of the irrigation areas, and to classify the major strategic winter- and summer-irrigated agricultural crops in the study area of the Euphrates River Basin.

Suggested National Land Use land Cover Classification System for India Using Remote Sensing Techniques

Suggested National Land Use land Cover Classification System for India Using Remote Sensing Techniques
Author: Naresh Chandra Gautam
Publsiher: Unknown
Total Pages: 54
Release: 1982
Genre: Land cover
ISBN: MINN:31951000161713S

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A Remote Sensing Compatible Land Use Activity Classification

A Remote Sensing Compatible Land Use Activity Classification
Author: Robert A. Ryerson,D. M. Gierman
Publsiher: Unknown
Total Pages: 28
Release: 1975
Genre: Imaging systems
ISBN: MINN:31951D02368347C

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Land Cover Classification of Remotely Sensed Images

Land Cover Classification of Remotely Sensed Images
Author: S. Jenicka
Publsiher: Springer Nature
Total Pages: 176
Release: 2021-03-10
Genre: Technology & Engineering
ISBN: 9783030665951

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The book introduces two domains namely Remote Sensing and Digital Image Processing. It discusses remote sensing, texture, classifiers, and procedures for performing the texture-based segmentation and land cover classification. The first chapter discusses the important terminologies in remote sensing, basics of land cover classification, types of remotely sensed images and their characteristics. The second chapter introduces the texture and a detailed literature survey citing papers related to texture analysis and image processing. The third chapter describes basic texture models for gray level images and multivariate texture models for color or remotely sensed images with relevant Matlab source codes. The fourth chapter focuses on texture-based classification and texture-based segmentation. The Matlab source codes for performing supervised texture based segmentation using basic texture models and minimum distance classifier are listed. The fifth chapter describes supervised and unsupervised classifiers. The experimental results obtained using a basic texture model (Uniform Local Binary Pattern) with the classifiers described earlier are discussed through the relevant Matlab source codes. The sixth chapter describes land cover classification procedure using multivariate (statistical and spectral) texture models and minimum distance classifier with Matlab source codes. A few performance metrics are also explained. The seventh chapter explains how texture based segmentation and land cover classification are performed using the hidden Markov model with relevant Matlab source codes. The eighth chapter gives an overview of spatial data analysis and other existing land cover classification methods. The ninth chapter addresses the research issues and challenges associated with land cover classification using textural approaches. This book is useful for undergraduates in Computer Science and Civil Engineering and postgraduates who plan to do research or project work in digital image processing. The book can serve as a guide to those who narrow down their research to processing remotely sensed images. It addresses a wide range of texture models and classifiers. The book not only guides but aids the reader in implementing the concepts through the Matlab source codes listed. In short, the book will be a valuable resource for growing academicians to gain expertise in their area of specialization and students who aim at gaining in-depth knowledge through practical implementations. The exercises given under texture based segmentation (excluding land cover classification exercises) can serve as lab exercises for the undergraduate students who learn texture based image processing.