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Spatial-Spectral Adaptive Fidelity and Noise Prior Reduction Guided Hyperspectral Image Denoising

About

The core challenge of hyperspectral image denoising is striking the right balance between data fidelity and noise prior modeling. Most existing methods place too much emphasis on the intrinsic priors of the image while overlooking diverse noise assumptions and the dynamic trade-off between fidelity and priors. To address these issues, we propose a denoising framework that integrates noise prior reduction and a spatial-spectral adaptive fidelity term. This framework considers comprehensive noise priors with fewer parameters and introduces an adaptive weight tensor to dynamically balance the fidelity and prior regularization terms. Within this framework, we further develop a fast and robust pixel-wise model combined with the representative coefficient total variation regularizer to accurately remove mixed noise in HSIs. The proposed method not only efficiently handles various types of noise but also accurately captures the spectral low-rank structure and local smoothness of HSIs. An efficient optimization algorithm based on the alternating direction method of multipliers is designed to ensure stable and fast convergence. Extensive experiments on simulated and real-world datasets demonstrate that the proposed model achieves superior denoising performance while maintaining competitive computational efficiency.

Xuelin Xie, Xiliang Lu, Zhengshan Wang, Yang Zhang, Long Chen• 2026

Related benchmarks

TaskDatasetResultRank
Image DenoisingCAVE Case 2
PSNR25.0156
23
DenoisingWDC dataset 256x256x191 Simulated (Case 3)
PSNR29
14
DenoisingWDC 256x256x191 Simulated (Case 2)
PSNR29.2613
14
DenoisingCAVE 200x200x31 Simulated (Case 1)
PSNR31.8896
10
DenoisingCAVE 200x200x31 Simulated (Case 4)
PSNR24.4118
10
DenoisingCAVE 200x200x31 Simulated (Case 5)
PSNR25.7411
10
DenoisingPaC dataset 300x300x103 Simulated (Case 2)
PSNR29.0473
10
DenoisingPaC 300x300x103 Simulated (Case 3)
PSNR29.9047
10
DenoisingPaC 300x300x103 Simulated (Case 4)
PSNR28.6153
10
DenoisingPaC dataset 300x300x103 Simulated (Case 5)
PSNR29.1734
10
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