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Image Fusion In Remote Sensing Conventional And Deep Learning Approaches Arian Azarang

  • SKU: BELL-23900504
Image Fusion In Remote Sensing Conventional And Deep Learning Approaches Arian Azarang
$ 31.00 $ 45.00 (-31%)

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Image Fusion In Remote Sensing Conventional And Deep Learning Approaches Arian Azarang instant download after payment.

Publisher: Morgan & Claypool Publishers
File Extension: PDF
File size: 43.78 MB
Pages: 93
Author: Arian Azarang, Nasser Kehtarnavaz
ISBN: 9781636390765, 1636390765
Language: English
Year: 2021

Product desciption

Image Fusion In Remote Sensing Conventional And Deep Learning Approaches Arian Azarang by Arian Azarang, Nasser Kehtarnavaz 9781636390765, 1636390765 instant download after payment.

Image fusion in remote sensing or pansharpening involves fusing spatial (panchromatic) and spectral (multispectral) images that are captured by different sensors on satellites. This book addresses image fusion approaches for remote sensing applications. Both conventional and deep learning approaches are covered. First, the conventional approaches to image fusion in remote sensing are discussed. These approaches include component substitution, multi-resolution, and model-based algorithms. Then, the recently developed deep learning approaches involving single-objective and multi-objective loss functions are discussed. Experimental results are provided comparing conventional and deep learning approaches in terms of both low-resolution and full-resolution objective metrics that are commonly used in remote sensing. The book is concluded by stating anticipated future trends in pansharpening or image fusion in remote sensing.

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