ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image

Remote sensing images (RSI) are useful for various tasks such as Earth observation and climate change. However, RSI may suffer from stripe noise due to physical limitations in sensor systems. Therefore, image destriping is essential, since stripe noise may cause serious problems in real applications...

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Main Authors: Namwon Kim, Seong-Soo Han, Chang-Sung Jeong
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10262317/
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author Namwon Kim
Seong-Soo Han
Chang-Sung Jeong
author_facet Namwon Kim
Seong-Soo Han
Chang-Sung Jeong
author_sort Namwon Kim
collection DOAJ
description Remote sensing images (RSI) are useful for various tasks such as Earth observation and climate change. However, RSI may suffer from stripe noise due to physical limitations in sensor systems. Therefore, image destriping is essential, since stripe noise may cause serious problems in real applications. In this paper, we shall present a new Alternating Direction method of multipliers (ADMM)-based Optimization Model, called ADOM for stripe noise removal in RSI. First, we formulate an optimization function for finding stripe noise components from the observed image for stripe noise removal, and then optimization process for solving the optimization function in order to extract stripe noise component. In the optimization process, we shall propose a weight-based detection strategy for efficient stripe noise component capture, and an ADMM-based acceleration strategy for fast stripe noise removal. In the weight-based detection strategy, we effectively detect stripe noise similar to the image details by using weighted norm generated by adjusting norm and group norm weights based on the momentum coefficient and residual parameter. In the ADMM-based acceleration strategy, we accelerate optimization process by using two control strategies: evidence-based starting point control and momentum-based step-size control. The former provides a starting point for more accurately finding stripe noise component, and the latter accelerates convergence by using the momentum coefficient while providing optimization stability by exploiting the damping coefficient. Our experimental results show that ADOM achieves better performance for both of simulated and real image data sets compared to the other destriping models.
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spelling doaj.art-b1d20f12713f4d25b2a9e233980966cd2023-10-20T23:00:47ZengIEEEIEEE Access2169-35362023-01-011110658710660610.1109/ACCESS.2023.331926810262317ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing ImageNamwon Kim0https://orcid.org/0000-0002-1865-5537Seong-Soo Han1Chang-Sung Jeong2Department of Electrical Engineering, Korea University, Seoul, South KoreaDivision of Liberal Studies, Kangwon National University, Samcheok, South KoreaDepartment of Electrical Engineering, Korea University, Seoul, South KoreaRemote sensing images (RSI) are useful for various tasks such as Earth observation and climate change. However, RSI may suffer from stripe noise due to physical limitations in sensor systems. Therefore, image destriping is essential, since stripe noise may cause serious problems in real applications. In this paper, we shall present a new Alternating Direction method of multipliers (ADMM)-based Optimization Model, called ADOM for stripe noise removal in RSI. First, we formulate an optimization function for finding stripe noise components from the observed image for stripe noise removal, and then optimization process for solving the optimization function in order to extract stripe noise component. In the optimization process, we shall propose a weight-based detection strategy for efficient stripe noise component capture, and an ADMM-based acceleration strategy for fast stripe noise removal. In the weight-based detection strategy, we effectively detect stripe noise similar to the image details by using weighted norm generated by adjusting norm and group norm weights based on the momentum coefficient and residual parameter. In the ADMM-based acceleration strategy, we accelerate optimization process by using two control strategies: evidence-based starting point control and momentum-based step-size control. The former provides a starting point for more accurately finding stripe noise component, and the latter accelerates convergence by using the momentum coefficient while providing optimization stability by exploiting the damping coefficient. Our experimental results show that ADOM achieves better performance for both of simulated and real image data sets compared to the other destriping models.https://ieeexplore.ieee.org/document/10262317/Destripingremote sensing imagealternating direction method of multipliersoptimization
spellingShingle Namwon Kim
Seong-Soo Han
Chang-Sung Jeong
ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
IEEE Access
Destriping
remote sensing image
alternating direction method of multipliers
optimization
title ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
title_full ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
title_fullStr ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
title_full_unstemmed ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
title_short ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
title_sort adom admm based optimization model for stripe noise removal in remote sensing image
topic Destriping
remote sensing image
alternating direction method of multipliers
optimization
url https://ieeexplore.ieee.org/document/10262317/
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AT seongsoohan adomadmmbasedoptimizationmodelforstripenoiseremovalinremotesensingimage
AT changsungjeong adomadmmbasedoptimizationmodelforstripenoiseremovalinremotesensingimage