基于优化像素系数的新型高效平移锐化方法

Tuba Çağlikantar, Melih Can Kiliç
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引用次数: 0

摘要

平移锐化的目的是通过将多光谱图像(MSI)与高空间分辨率的全色图像(PAN)相结合,生成多光谱、高空间分辨率的图像。平移锐化方法是在 MS 图像和 PAN 图像之间进行的,MSI 图像是借助插值将 MSI 图像转换为 PAN 图像。在本研究中,PAN 锐化是一个优化问题。假设最佳解决方案是用优化系数乘以 MS 图像的像素。要逐一优化该系数矩阵中的所有系数,成本会很高。因此,我们尝试用 5 种不同的优化方法来找到这些系数。此外,还与文献中常用的 19 种不同方法进行了比较。比较中使用了 6 种不同的评估标准。这些比较是在 3 个不同的数据集上进行的。结果表明,所提出的方法优于其他方法。
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A new and efficient pan sharpening method based on optimized pixel coefficients
Pan sharpening aims to create a multispectral, high spatial resolution image by combining the multispectral image (MSI) with a high spatial resolution panchromatic image (PAN). Pan sharpening methods are performed between the MS image, which is the MSI image brought to PAN dimensions with the help of interpolation, and the PAN image. In this study, PAN sharpening is approached as an optimization problem. It is assumed that the optimal solution consists of multiplying the pixels of the MS image by optimized coefficients. It would be costly to optimize all the coefficients in this coefficient matrix one by one. For this reason, these coefficients were tried to be found with 5 different optimization-based methods. It was also compared with 19 different methods commonly used in the literature. 6 different evaluation criteria were used for this comparison. These comparisons were made on 3 different datasets. It has been observed that the proposed methods are superior to other methods.
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