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Autori principali: Hu, Xuran, Zhu, Mingzhe, Stanković, Djordje, Feng, Zhenpeng, Mao, Shouhan, Stanković, Ljubiša
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.18121
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author Hu, Xuran
Zhu, Mingzhe
Stanković, Djordje
Feng, Zhenpeng
Mao, Shouhan
Stanković, Ljubiša
author_facet Hu, Xuran
Zhu, Mingzhe
Stanković, Djordje
Feng, Zhenpeng
Mao, Shouhan
Stanković, Ljubiša
contents Synthetic Aperture Radar (SAR) images are widely used in remote sensing due to their all-weather, all-day imaging capabilities. However, SAR images are highly susceptible to noise, particularly speckle noise, caused by the coherent imaging process, which severely degrades image quality. This has driven increasing research interest in SAR despeckling. Sparse representation-based denoising has been extensively applied in natural image processing, yet SAR despeckling requires addressing non-Gaussian noise and ensuring sparsity in the transform domain. In this work, we propose an innovative SAR despeckling approach grounded in compressive sensing theory. By applying the Log-Yeo-Johnson transformation, we convert gamma-distributed noise into an approximate Gaussian distribution, facilitating sparse representation. The method incorporates noise and sparsity priors, leveraging a non-local sparse representation through auxiliary matrices: one capturing varying noise characteristics across regions and the other encoding adaptive sparsity information.
format Preprint
id arxiv_https___arxiv_org_abs_2412_18121
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SAR Despeckling via Log-Yeo-Johnson Transformation and Sparse Representation
Hu, Xuran
Zhu, Mingzhe
Stanković, Djordje
Feng, Zhenpeng
Mao, Shouhan
Stanković, Ljubiša
Information Theory
I.4.4
Synthetic Aperture Radar (SAR) images are widely used in remote sensing due to their all-weather, all-day imaging capabilities. However, SAR images are highly susceptible to noise, particularly speckle noise, caused by the coherent imaging process, which severely degrades image quality. This has driven increasing research interest in SAR despeckling. Sparse representation-based denoising has been extensively applied in natural image processing, yet SAR despeckling requires addressing non-Gaussian noise and ensuring sparsity in the transform domain. In this work, we propose an innovative SAR despeckling approach grounded in compressive sensing theory. By applying the Log-Yeo-Johnson transformation, we convert gamma-distributed noise into an approximate Gaussian distribution, facilitating sparse representation. The method incorporates noise and sparsity priors, leveraging a non-local sparse representation through auxiliary matrices: one capturing varying noise characteristics across regions and the other encoding adaptive sparsity information.
title SAR Despeckling via Log-Yeo-Johnson Transformation and Sparse Representation
topic Information Theory
I.4.4
url https://arxiv.org/abs/2412.18121