论文标题

非本地符合全球:高光谱图像恢复的迭代范式

Non-local Meets Global: An Iterative Paradigm for Hyperspectral Image Restoration

论文作者

He, Wei, Yao, Quanming, Li, Chao, Yokoya, Naoto, Zhao, Qibin, Zhang, Hongyan, Zhang, Liangpei

论文摘要

非本地低级张量近似是作为高光谱图像(HSI)恢复的最先进方法开发的,其中包括降解,压缩HSI重建和涂料的任务。不幸的是,尽管其恢复性能受益于更多的光谱频段,但其运行时也大大增加了。在本文中,我们声称HSI位于全球频谱低率子空间中,每个完整带斑块组的光谱子空间应位于这个全球低率子空间中。这激发了我们提出一个统一范式,结合了HSI恢复的空间和光谱特性。拟议的范式从低级别正交基础探索的非本地空间denoisis和光计算复杂性中享有性能优势。开发了具有等级适应性的有效最小化算法。它是通过首先解决潜在输入图像更新的保真度项相关的问题来完成的,然后学习低维正交的基础和从潜在输入图像中减少相关的图像。随后,开发了非本地低级别脱氧,以优化减少的图像和正交基础。最后,使用模拟和真实数据集进行了HSI DeNoising,压缩重建和介绍任务的实验,证明了其相对于最先进的HSI恢复方法的优势。

Non-local low-rank tensor approximation has been developed as a state-of-the-art method for hyperspectral image (HSI) restoration, which includes the tasks of denoising, compressed HSI reconstruction and inpainting. Unfortunately, while its restoration performance benefits from more spectral bands, its runtime also substantially increases. In this paper, we claim that the HSI lies in a global spectral low-rank subspace, and the spectral subspaces of each full band patch group should lie in this global low-rank subspace. This motivates us to propose a unified paradigm combining the spatial and spectral properties for HSI restoration. The proposed paradigm enjoys performance superiority from the non-local spatial denoising and light computation complexity from the low-rank orthogonal basis exploration. An efficient alternating minimization algorithm with rank adaptation is developed. It is done by first solving a fidelity term-related problem for the update of a latent input image, and then learning a low-dimensional orthogonal basis and the related reduced image from the latent input image. Subsequently, non-local low-rank denoising is developed to refine the reduced image and orthogonal basis iteratively. Finally, the experiments on HSI denoising, compressed reconstruction, and inpainting tasks, with both simulated and real datasets, demonstrate its superiority with respect to state-of-the-art HSI restoration methods.

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