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JOINT MULTICHANNEL PANSHARPENING FOR MULTISPECTRAL IMAGERY

机译:用于多光谱图像的联合多通道泛鼓彭化

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Pan-sharpening is a common post-processing operation for captured multispectral satellite imagery, where the spatial resolution of images gathered in various spectral bands is enhanced by fusing them with a panchromatic image captured at a higher resolution. Previously proposed pan-sharpening techniques operate on a per-channel basis, sharpening each multispectral band independently based on the panchromatic image, often in an ad hoc manner. In contrast with most prior techniques, we formulate pan-sharpening as the problem of jointly estimating the high resolution multispectral images to minimize the combined squared residual error in physically motivated observation models of the low resolution multispectral and the high resolution panchromatic images. To realize pan-sharpening using our proposed formulation, we develop an iterative algorithm to solve the joint minimization resulting in an overall algorithm with modest computational complexity. We evaluate our proposed algorithm and benchmark it against previously proposed methods using established quantitative measures of SNR, SAM, ERGAS, Q, and Q4 indices. Both the quantitative results and visual evaluation demonstrate that the proposed joint formulation provides superior results compared with pre-existing methods.
机译:泛锐是捕获的多光谱卫星图像的常见后处理操作,其中通过用以更高分辨率捕获的一片捕获的一体化图像来增强在各种光谱带中收集的图像的空间分辨率。先前提出的PAN锐化技术在每个通道的基础上运行,基于临时图像独立地锐化每个多光谱带,通常以临时方式。与大多数现有技术相比,我们将泛锐锐化作为联合估计高分辨率多光谱图像的问题,以最小化低分辨率多光谱和高分辨率平面图像的物理动力观察模型中的组合平方剩余误差。为了实现使用我们提出的制定来实现泛锐化,我们开发了一种迭代算法来解决与具有适度计算复杂性的整体算法产生的关节最小化。我们评估我们所提出的算法并采用先前提出的方法,采用既定的SNR,SAM,ERGAS,Q和Q4索引的定量测量来基准。定量结果和视觉评估表明,与预先存在的方法相比,所提出的联合配方提供了优异的结果。

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