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Hyperspectral Image Denoising via Subspace Low-rank Representation and Spatial-spectral Total Variation

机译:通过子空间低秩表示和空间光谱总变化的高光谱图像去噪

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摘要

Hyperspectral images (HSIs) acquired actually often contain various types of noise, such as Gaussian noise, impulse noise, and dead lines. On the basis of land covers, the spectral vectors in HSI can be separated into different classifications, which means the spectral space can be regarded as a union of several low-rank (LR) subspaces rather than a single LR subspace. Recently, LR constraint has been widely applied for denoising HSI. However, those LR-based methods do not constrain the intrinsic structure of spectral space. And these methods cannot make better use of the spatial or spectral features in an HSI cube. In this article, a framework named subspace low-rank representation combined with spatial-spectral total variation regularization (SLRR-SSTV) is proposed for HSI denoising, where the SLRR is introduced to more precisely satisfy the low-rank property of spectral space, and the SSTV regularization is involved for the spatial and spectral smoothness enhancement. An inexact augmented Lagrange multiplier method by alternative iteration is employed for the SLRR-SSTV model solution. Both simulated and real HSI experiment results demonstrate that the proposed method can achieve a state-of-the-art performance in HSI denoising. (C) 2020 Society for Imaging Science and Technology.
机译:获得的高光谱图像(HSIS)实际上通常包含各种类型的噪声,例如高斯噪声,脉冲噪声和死线。在陆地封面的基础上,HSI中的光谱向量可以分成不同的分类,这意味着频谱空间可以被视为几个低级(LR)子空间的联合而不是单个LR子空间。最近,LR约束已被广泛应用于去噪HSI。然而,基于LR的方法不会限制光谱空间的内在结构。这些方法不能更好地利用HSI立方体中的空间或光谱特征。在本文中,为HSI去噪提出了一种名为Suppace低秩表示的框架,该框架与空间总变化正则化(SLRR-SSTV)相结合,其中SLRR被引入更精确地满足光谱空间的低秩属性,以及SSTV正规化涉及空间和光谱平滑度增强。通过替代迭代的不精确增强拉格朗日乘法器方法用于SLRR-SSTV模型解决方案。模拟和实际HSI实验结果都表明,该方法可以在HSI去噪中实现最先进的性能。 (c)2020年影像科技协会。

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