Abstract
Hyperspectral image (HSI) is easily corrupted by different kinds of noise, such as stripes, dead pixels, impulse noise, Gaussian noise, etc. Due to less consideration of the structural specificity of stripes, many existing HSI denoising methods cannot effectively remove the heavy stripes in mixed noise. In this paper, we classify the noise on HSI into three types: sparse noise, stripe noise, and Gaussian noise. The clean image and different types of noise are treated as independent components. In this way, the image denoising task can be naturally regarded as an image decomposition problem. Thanks to the structural characteristic of stripes and the low-rank property of HSI, we propose to destripe and denoise the HSI by using stripe and spectral low-rank matrix recovery and combine it with the global spatial-spectral TV regularization (SSLR-SSTV). By considering different properties of different HSI ingredients, the proposed method separates the original image from the noise components perfectly. Both simulation and real image denoising experiments demonstrate that the proposed method can achieve a satisfactory denoising result compared with the state-of-the-art methods. Especially, it outperforms the other methods in the task of stripe noise removal visually and quantitatively.
Highlights
IntroductionHyperspectral image (HSI) data play an essential role in the field of remote sensing
We propose a stripe-spectral low-rank (SSLR) matrix recovery and combine it with the global spatial-spectral total variation (SSTV) regularization method to restore the Hyperspectral image (HSI) corrupted by various types of noises
The parameter λ controls the regularization of the sparse noise B, β is the parameter for stripe noise S, and τ adjusts the spatial-spectral smoothness of the reconstructed X
Summary
Hyperspectral image (HSI) data play an essential role in the field of remote sensing. Unlike natural images, it contains spatial information, and rich spectral information. It contains spatial information, and rich spectral information It is widely used in urban planning, earth observation, agriculture, food safety, etc. HSI suffers from various noise types because of the unstable working environment, photon effects, instrument failure, etc. These noises degrade the quality of HSI and limit the performance of subsequent applications, e.g., classification, segmentation, change detection, and so on [3,4,5,6]. Mixed noise denoising becomes a crucial step for further analysis and applications of the HSIs
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