Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm

For the problem of attribute scattering center parameter estimation in synthetic aperture radar (SAR) image, a method based on the water wave optimization (WWO) algorithm is proposed. First, the segmentation and decoupling of high-energy regions in SAR image are performed in the image domain to obta...

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Main Authors: Zhangkai Zhou, Yihan Li
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2021/6733510
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spelling doaj-e1e34f137c5640ac88ae20786ddb175d2021-09-20T00:30:04ZengHindawi LimitedScientific Programming1875-919X2021-01-01202110.1155/2021/6733510Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization AlgorithmZhangkai Zhou0Yihan Li1School of Information Science and EngineeringSchool of Information Science and EngineeringFor the problem of attribute scattering center parameter estimation in synthetic aperture radar (SAR) image, a method based on the water wave optimization (WWO) algorithm is proposed. First, the segmentation and decoupling of high-energy regions in SAR image are performed in the image domain to obtain the representation of a single scattering center. Afterwards, based on the parameterized model of the attribute scattering center, an optimization problem is constructed to search for the optimal parameters of the separated single scattering center. In this phase, the WWO algorithm is introduced to optimize the parameters. The algorithm has powerfully global and local searching capabilities and avoids falling into local optimum while ensuring the optimization accuracy. Therefore, the WWO algorithm could ensure the reliability of scattering center parameter estimation. The single scattering center after solution is eliminated from the original image and the residual image is segmented into high-energy regions, so the parameters of the next scattering center are estimated sequentially. Finally, the parameter set of all scattering centers in the input SAR image can be obtained. In the experiments, firstly, the parameter estimation verification is performed based on the SAR images in the MSTAR dataset. The comparison of the parameter estimation results with the original image and the reconstruction based on the estimated parameter set reflect the effectiveness of the proposed method. In addition, the experiment is also conducted using the SAR target recognition algorithms based on the estimated attribute parameters. By comparing the recognition performance with other parameter estimation algorithms under the same conditions, the performance superiority of the proposed method in attribute scattering center parameter estimation is further demonstrated.http://dx.doi.org/10.1155/2021/6733510
collection DOAJ
language English
format Article
sources DOAJ
author Zhangkai Zhou
Yihan Li
spellingShingle Zhangkai Zhou
Yihan Li
Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm
Scientific Programming
author_facet Zhangkai Zhou
Yihan Li
author_sort Zhangkai Zhou
title Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm
title_short Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm
title_full Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm
title_fullStr Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm
title_full_unstemmed Parameter Estimation of Attribute Scattering Center Based on Water Wave Optimization Algorithm
title_sort parameter estimation of attribute scattering center based on water wave optimization algorithm
publisher Hindawi Limited
series Scientific Programming
issn 1875-919X
publishDate 2021-01-01
description For the problem of attribute scattering center parameter estimation in synthetic aperture radar (SAR) image, a method based on the water wave optimization (WWO) algorithm is proposed. First, the segmentation and decoupling of high-energy regions in SAR image are performed in the image domain to obtain the representation of a single scattering center. Afterwards, based on the parameterized model of the attribute scattering center, an optimization problem is constructed to search for the optimal parameters of the separated single scattering center. In this phase, the WWO algorithm is introduced to optimize the parameters. The algorithm has powerfully global and local searching capabilities and avoids falling into local optimum while ensuring the optimization accuracy. Therefore, the WWO algorithm could ensure the reliability of scattering center parameter estimation. The single scattering center after solution is eliminated from the original image and the residual image is segmented into high-energy regions, so the parameters of the next scattering center are estimated sequentially. Finally, the parameter set of all scattering centers in the input SAR image can be obtained. In the experiments, firstly, the parameter estimation verification is performed based on the SAR images in the MSTAR dataset. The comparison of the parameter estimation results with the original image and the reconstruction based on the estimated parameter set reflect the effectiveness of the proposed method. In addition, the experiment is also conducted using the SAR target recognition algorithms based on the estimated attribute parameters. By comparing the recognition performance with other parameter estimation algorithms under the same conditions, the performance superiority of the proposed method in attribute scattering center parameter estimation is further demonstrated.
url http://dx.doi.org/10.1155/2021/6733510
work_keys_str_mv AT zhangkaizhou parameterestimationofattributescatteringcenterbasedonwaterwaveoptimizationalgorithm
AT yihanli parameterestimationofattributescatteringcenterbasedonwaterwaveoptimizationalgorithm
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