Remote Sensing Image Fusion

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  • Remote Sensing Image Fusion Book Detail

  • Author : Luciano Alparone
  • Release Date : 2015-03-06
  • Publisher : CRC Press
  • Genre : Science
  • Pages : 328
  • ISBN 13 : 1466587504
  • File Size : 38,38 MB

Remote Sensing Image Fusion by Luciano Alparone PDF Summary

Book Description: A synthesis of more than ten years of experience, Remote Sensing Image Fusion covers methods specifically designed for remote sensing imagery. The authors supply a comprehensive classification system and rigorous mathematical description of advanced and state-of-the-art methods for pansharpening of multispectral images, fusion of hyperspectral and

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