Degradation-Noise-Aware Deep Unfolding Transformer for Hyperspectral Image Denoising

IF 8.6 1区 地球科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Geoscience and Remote Sensing Pub Date : 2025-02-20 DOI:10.1109/TGRS.2025.3543920
Haijin Zeng;Kai Feng;Xudong Zhao;Jiezhang Cao;Shaoguang Huang;Hiep Luong;Wilfried Philips
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Abstract

Hyperspectral images (HSIs) play a pivotal role in fields, such as medical diagnosis and agriculture. However, it often contends with significant noise stemming from narrowband spectral filtering. Existing denoising techniques have their limitations: model-driven methods rely on manual priors and hyperparameters, while learning-based methods struggle to discern intrinsic noise patterns, as they require paired images with specific example noise for training, fail to capture critical noise distribution information, leading to unrobust denoising results. This work addresses the issue by presenting a degradation-noise-aware unfolding network (DNA-Net). Unlike training directly with the simulated noise, DNA-Net initially models general sparse and Gaussian noise through statistic distributions. It then explicitly represents image priors with a customized spectral transformer. The model is subsequently unfolded into an end-to-end (E2E) network, with hyperparameters adaptively estimated from noisy HSI and degradation models, effectively regulating each iteration. Furthermore, a novel U-shaped local-nonlocal–spectral transformer (U-LNSA) is introduced, simultaneously capturing spectral correlations, local features, and nonlocal dependencies. The integration of U-LNSA into DNA-Net establishes the first Transformer-based deep unfolding method for HSI denoising. Experimental results on synthetic and real noise validate DNA-Net’s superior performance over state-of-the-art (SOTA) methods. Moreover, the DNA-Net, trained exclusively on mixed Gaussian noise and impulse noise, demonstrates the ability to generalize to unseen noise present in real images. Code and models will be released at: https://github.com/NavyZeng/DNA-Net.
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用于高光谱图像去噪的退化噪声感知深度展开变压器
高光谱图像(hsi)在医学诊断和农业等领域发挥着关键作用。然而,它经常面临窄带频谱滤波产生的显著噪声。现有的去噪技术有其局限性:模型驱动的方法依赖于人工先验和超参数,而基于学习的方法很难识别内在的噪声模式,因为它们需要与特定示例噪声配对的图像进行训练,无法捕获关键的噪声分布信息,导致去噪结果不鲁棒。这项工作通过提出一个退化噪声感知展开网络(DNA-Net)来解决这个问题。与直接使用模拟噪声进行训练不同,DNA-Net最初通过统计分布对一般稀疏噪声和高斯噪声进行建模。然后用自定义的光谱转换器显式表示图像先验。该模型随后展开为端到端(E2E)网络,从噪声HSI和退化模型中自适应估计超参数,有效地调节每次迭代。在此基础上,提出了一种新颖的u型局部-非局部-谱转换器(U-LNSA),可同时捕获谱相关性、局部特征和非局部依赖关系。将U-LNSA集成到DNA-Net中,建立了第一个基于transformer的HSI去噪深度展开方法。合成噪声和真实噪声的实验结果验证了DNA-Net优于最先进的(SOTA)方法的性能。此外,DNA-Net,专门训练混合高斯噪声和脉冲噪声,证明了推广到真实图像中存在的看不见的噪声的能力。代码和模型将在https://github.com/NavyZeng/DNA-Net上发布。
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来源期刊
IEEE Transactions on Geoscience and Remote Sensing
IEEE Transactions on Geoscience and Remote Sensing 工程技术-地球化学与地球物理
CiteScore
11.50
自引率
28.00%
发文量
1912
审稿时长
4.0 months
期刊介绍: IEEE Transactions on Geoscience and Remote Sensing (TGRS) is a monthly publication that focuses on the theory, concepts, and techniques of science and engineering as applied to sensing the land, oceans, atmosphere, and space; and the processing, interpretation, and dissemination of this information.
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