DE-striping hype spectral Remote Sensing Images using Deep Convolutional Neural Network

Authors

  • Maad M. Mijwil Computer Techniques Engineering Department, Baghdad College of Economic Sciences University, Baghdad, Iraq http://orcid.org/0000-0002-2884-2504
  • Atheel Sabih Shaker Computer Techniques Engineering Department, Baghdad College of Economic Sciences University, Baghdad, Iraq
  • Alaa Wagih Abdulqader Computer Techniques Engineering Department, Baghdad College of Economic Sciences University, Baghdad, Iraq

DOI:

https://doi.org/10.24203/ajas.v9i4.6719

Keywords:

Neural Network, Image, Hyperspectral imagery, Biological data, De-striping, DCNN, Hyperion data

Abstract

Hyperspectral far off detecting records reflectance or emittance information in a huge amount of bordering and tight unearthly groups, and accordingly has numerous data in distinguishing and planning the mineral zones. Then again, the science and natural information gives us some other productive data about the actual qualities of pictures and channels that have been recorded from the surface. In this work, we focus on de-striping the hyperspectral remote sensing images on Hyperion data by applying Deep Convolutional Neural Network (DCNN). What is clear is the high significance of applying the sufficient pre-preparing on Hyperion information as a result of low sign to-commotion proportion. By contrasting the known layers of DCNN model for de-striping hyperspectral pictures. The results obtained by applying the mentioned methods, it is revealed that all the higher stripes in an image as well as black color has been reduced and entirely associated with the Hyperion data alteration, and in contrast, the Hyperion imagery successfully corresponds to the de-striping of hyperspectral image with an accuracy of 91.89% using DCNN model. The proposed DCNN is capable of reaching high accuracy 150s after the start of the evaluation phase and never reaches low accuracy. The pre-trained DCNN model approach would be an adequate solution considering de-striping as its high inference time is lower compared existing available methods which are not as efficient for de-striping.

Author Biography

Maad M. Mijwil, Computer Techniques Engineering Department, Baghdad College of Economic Sciences University, Baghdad, Iraq

Maad M. Mijwil received B.Sc. degree in Software Engineering from Software Engineering Department at Baghdad College of Economics Sciences University, Iraq in 2008/2009 and M.Sc. degree in Wireless sensor network of computer science from University of Baghdad, Iraq in 2015. Currently he is working Assistant Lecturer at Baghdad College of Economics Sciences University.

References

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Published

2021-09-11

How to Cite

Mijwil, M. M., Shaker, A. S. ., & Abdulqader, A. W. . . (2021). DE-striping hype spectral Remote Sensing Images using Deep Convolutional Neural Network. Asian Journal of Applied Sciences, 9(4). https://doi.org/10.24203/ajas.v9i4.6719

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Articles