IEEE Access (Jan 2020)

Tensor-Based Low-Rank and Sparse Prior Information Constraints for Hyperspectral Image Denoising

  • Guxi Wang,
  • Hongwei Han,
  • Emmanuel John M. Carranza,
  • Si Guo,
  • Ke Guo,
  • Keyan Xiao

DOI
https://doi.org/10.1109/ACCESS.2020.2996303
Journal volume & issue
Vol. 8
pp. 102935 – 102946

Abstract

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Hyperspectral data have been widely used in various fields due to its rich spectral and spatial information in recent years. Yet, hyperspectral images are always tainted by a variety of mixed noises. These noises seriously limit the accuracy of subsequent applications. To remove noise, this paper, based on low-rank tensor decomposition, combined with non-local self-similar prior information, proposes a tensor-based non-local low-rank denoising model, where non-local self-similarity uses mainly spatial correlation while low-rank tensor decomposition method uses mainly spectral correlation between bands. Traditional tensor-based methods are commonly NP-hard to compute and are sensitive to sparse noise. However, the method proposed in this paper can separate efficiently the low-rank clean image from Gaussian noise and sparse noise (pulses, deadlines, stripes, speckle, etc.) by using a new tensor singular value decomposition (T-SVD) and tensor nuclear norm (TNN). The NP-hard task was also achieved well by the alternating direction multiplier method. Due to the full use of spectral and spatial information of the data, Gaussian noise and sparse noise can be effectively removed. The effectiveness of our algorithm was verified through experiments using simulated and real data.

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