Remote Sensing Applications in Environmental and Earth System Sciences

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  • Remote Sensing Applications in Environmental and Earth System Sciences Book Detail

  • Author : Nicolas R. Dalezios
  • Release Date : 2021-05-12
  • Publisher : CRC Press
  • Genre : Technology & Engineering
  • Pages : 388
  • ISBN 13 : 1351680668
  • File Size : 72,72 MB

Remote Sensing Applications in Environmental and Earth System Sciences by Nicolas R. Dalezios PDF Summary

Book Description: Remote Sensing Applications in Environmental and Earth System Sciences is a contemporary, multi-disciplinary, multi-scaling, updated, and upgraded approach of applied remote sensing in the environment. The book begins with an overview of remote sensing technology, and then explains the types of data that can be used as well as the image processing and analysis methods that can be applied to each type of application through the use of case studies throughout. Includes a wide spectrum of environmental applications and issues Explains methodological image analysis and interpretation procedures for conducting a variety of environmental analyses Discusses the development of early warning systems Covers monitoring of the environment as a whole – atmosphere, land, and water Explores the latest remote sensing systems in environmental applications This book is an excellent resource for anyone who is interested in remote sensing technologies and their use in Earth systems, natural resources, and environmental science.

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Advances in Environmental Remote Sensing

Advances in Environmental Remote Sensing

File Size : 74,74 MB
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