基于明确定义凸自相似正则化的多光谱卫星图像全色锐化

Chia-Hsiang Wang, Chia-Hsiang Lin, J. Bioucas-Dias, Wei-Cheng Zheng, K. Tseng
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引用次数: 4

摘要

在卫星成像遥感中,将从全色图像中提取的空间细节注入到多光谱图像中被称为泛锐化,这是一种病态的、需要正则化的方法。自相似是一种重要的先验知识,在正则化各种成像逆问题方面取得了巨大的成功,在自然图像中得到了广泛的观察;然而,它的形式化并不是直截了当的。最近,我们在数学上将自相似模式描述为加权图,然后将其转换为显式凸正则化器,用于我们的泛锐化准则设计。最重要的是,这种凸性允许采用凸优化理论求解具有收敛保证的自相似正则化逆问题。我们的pansharpening算法的一个步骤是由我们新的自相似正则化器引起的近端算子,这是由另一个定制的算法解决的,这个算法本身就很有趣,可以用作去噪。实验结果表明,该方法具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Panchromatic Sharpening of Multispectral Satellite Imagery Via an Explicitly Defined Convex Self-Similarity Regularization
In satellite imaging remote sensing, injecting spatial details extracted from a panchromatic image into a multispectral image is referred to as pansharpening, which is ill-posed and requires regularization. Self-similarity, a critical prior knowledge yielding great success in regularizing various imaging inverse problems, has been widely observed in natural images; its formalization is not, however, straightforward. Very recently, we mathematically described the self-similarity pattern as a weighted graph, which can then be transformed into an explicit convex regularizer, that is adopted in our pansharpening criterion design. Most importantly, such convexity allows the adoption of convex optimization theory in solving self-similarity regularized inverse problems with convergence guarantee. One step of our pansharpening algorithm is exactly the proximal operator induced by our new self-similarity regularizer, which is solved by another customized algorithm that is interesting in its own right as could be used as a denoiser. Experiments show promising performance of the proposed method.
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