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Quantitative Quality Evaluation of Pansharpened Imagery: Consistency Versus Synthesis

机译:锐化图像的定量质量评估:一致性与综合性

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Pansharpening is the process of fusing a high-resolution panchromatic image and a low-spatial-resolution multispectral image to yield a high-spatial-resolution multispectral image. This is a typical ill-posed inverse problem, and in the past two decades, many methods have been proposed to solve it. Still, there is no general consensus on the best way to quantitatively evaluate the spectral and spatial quality of the fused image. In this paper, we compare the two most widely used and accepted methods for quality evaluation. The first method is the verification of the synthesis property which states that the fused image should be as identical as possible to the multispectral image that the sensor would observe at a higher resolution. This is impossible to verify unless the observed images are spatially degraded so that the original observed multispectral image can be used as reference. The second method is to use metrics that do not use a reference, such as the quality no reference (QNR) metrics. However, there is another property, i.e., the consistency property, which states that the fused image reduced to the resolution of the original multispectral image should be as identical to the original image as possible. This has generally been considered a necessary condition that does not have to imply correct fusion. Using real WorldView-2 and QuickBird data and a total of 18 component substitution and multiresolution analysis methods, we demonstrate that the consistency property can indeed be used to give reliable assessment of the relative performance of pansharpening methods and is superior to using the QNR metrics.
机译:全色锐化是将高分辨率全色图像和低空间分辨率多光谱图像融合以生成高空间分辨率多光谱图像的过程。这是一个典型的不适定逆问题,在过去的二十年中,已经提出了许多解决方法。但是,关于定量评估融合图像光谱和空间质量的最佳方法尚无普遍共识。在本文中,我们比较了两种最广泛使用和公认的质量评估方法。第一种方法是验证合成属性,该方法指出融合图像应与传感器将在更高分辨率下观察到的多光谱图像尽可能相同。除非观察到的图像在空间上退化,否则无法验证,以便原始观察到的多光谱图像可以用作参考。第二种方法是使用不使用参考的指标,例如无参考质量(QNR)指标。但是,还有另一个属性,即一致性属性,该属性指出缩小到原始多光谱图像分辨率的融合图像应与原始图像尽可能相同。通常认为这是不必暗示正确融合的必要条件。使用真实的WorldView-2和QuickBird数据以及总共18种组件替换和多分辨率分析方法,我们证明了一致性属性确实可以用于可靠地评估全景渲染方法的相对性能,并且优于使用QNR指标。

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