2022
DOI: 10.3390/s22010343
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Low-Rank and Sparse Matrix Recovery for Hyperspectral Image Reconstruction Using Bayesian Learning

Abstract: In order to reduce the amount of hyperspectral imaging (HSI) data transmission required through hyperspectral remote sensing (HRS), we propose a structured low-rank and joint-sparse (L&S) data compression and reconstruction method. The proposed method exploits spatial and spectral correlations in HSI data using sparse Bayesian learning and compressive sensing (CS). By utilizing a simultaneously L&S data model, we employ the information of the principal components and Bayesian learning to reconstruct th… Show more

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Cited by 3 publications
(1 citation statement)
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References 24 publications
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“…Following this assumption, the sparse prior information was then constrained to recover the image from the noise. Due to the effectiveness of low rank and sparsity in constrained image optimization problems, image-processing schemes that combine constrained sparsity with low-rank prior information have been continuously proposed [14,15]. Some image-denoising methods use decomposition models of low rank and sparse components, such as the robust principal component analysis (RPCA) method [16], aimed at separating low-rank images from sparse interference images.…”
Section: Introductionmentioning
confidence: 99%
“…Following this assumption, the sparse prior information was then constrained to recover the image from the noise. Due to the effectiveness of low rank and sparsity in constrained image optimization problems, image-processing schemes that combine constrained sparsity with low-rank prior information have been continuously proposed [14,15]. Some image-denoising methods use decomposition models of low rank and sparse components, such as the robust principal component analysis (RPCA) method [16], aimed at separating low-rank images from sparse interference images.…”
Section: Introductionmentioning
confidence: 99%