Multispectral Image Noise Removal With Adaptive Loss and Multiple Image Priors Model.

IEEE J. Sel. Top. Appl. Earth Obs. Remote. Sens.(2023)

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摘要
Multispectral image (MSI) denoising is a crucial preprocessing step for various subsequent image processing tasks, including classification, recognition, and unmixing. This article proposes a novel image denoising model that integrates both noise modeling and image prior knowledge modeling. Specifically, to account for the complexity and nonuniformity of noise, a nonindependent identically distributed mixture of Gaussian model is employed for noise modeling, and a weighted loss function is obtained. The weights used in the loss function are adaptively learned from noisy MSI and employed to adjust the denoising strength of each pixel. In additionally, the model leverages the prior knowledge of the image by utilizing a nonlocal low-rank matrix model that captures the spatial-spectral correlation and nonlocal spatial similarity priors of the image. Moreover, our model adopts the weighted spatial-spectral TV model to encode the local smoothness prior of the image. Both prior models are translated into regularization terms in the denoising model. The efficacy of the proposed method is demonstrated through both simulated and real image experiments.
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关键词
Adapative loss function, multispectral image (MSI) denoising, MSI priors, total variation model
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