4.6 Article

Hyperspectral Image Restoration Using Weighted Group Sparsity-Regularized Low-Rank Tensor Decomposition

期刊

IEEE TRANSACTIONS ON CYBERNETICS
卷 50, 期 8, 页码 3556-3570

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2019.2936042

关键词

Image restoration; TV; Matrix decomposition; Correlation; Hyperspectral imaging; Noise measurement; Augmented Lagrange multiplier (ALM) algorithm; group sparsity; hyperspectral image restoration; low-rank tensor decomposition

资金

  1. NSFC [61772003]
  2. Japan Society for the Promotion of Science (KAKENHI) [18K18067, 19K20308]
  3. Grants-in-Aid for Scientific Research [19K20308] Funding Source: KAKEN

向作者/读者索取更多资源

Mixed noise (such as Gaussian, impulse, stripe, and deadline noises) contamination is a common phenomenon in hyperspectral imagery (HSI), greatly degrading visual quality and affecting subsequent processing accuracy. By encoding sparse prior to the spatial or spectral difference images, total variation (TV) regularization is an efficient tool for removing the noises. However, the previous TV term cannot maintain the shared group sparsity pattern of the spatial difference images of different spectral bands. To address this issue, this article proposes a group sparsity regularization of the spatial difference images for HSI restoration. Instead of using l(1)- or l(2)-norm (sparsity) on the difference image itself, we introduce a weighted l(2,1)-norm to constrain the spatial difference image cube, efficiently exploring the shared group sparse pattern. Moreover, we employ the well-known low-rank Tucker decomposition to capture the global spatial-spectral correlation from three HSI dimensions. To summarize, a weighted group sparsity-regularized low-rank tensor decomposition (LRTDGS) method is presented for HSI restoration. An efficient augmented Lagrange multiplier algorithm is employed to solve the LRTDGS model. The superiority of this method for HSI restoration is demonstrated by a series of experimental results from both simulated and real data, as compared with the other state-of-the-art TV-regularized low-rank matrix/tensor decomposition methods.

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