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An adaptive PCA fusion method for remote sensing images

机译:遥感影像的自适应PCA融合方法

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摘要

The principal component analysis (PCA) method is a popular fusion method used for its efficiency and high spatial resolution improvement. However, the spectral distortion is often found in PCA. In this paper, we propose an adaptive PCA method to enhance the spectral quality of the fused image. The amount of spatial details of the panchromatic (PAN) image injected into each band of the multi-spectral (MS) image is appropriately determined by a weighting matrix, which is defined by the edges of the PAN image, the edges of the MS image and the proportions between MS bands. In order to prove the effectiveness of the proposed method, the qualitative visual and quantitative analyses are introduced. The correlation coefficient (CC), the spectral discrepancy (SPD), and the spectral angle mapper (SAM) are used to measure the spectral quality of each fused band image. Q index is calculated to evaluate the global spectral quality of all the fused bands as a whole. The spatial quality is evaluated by the average gradient (AG) and the standard deviation (STD). Experimental results show that the proposed method improves the spectral quality very much comparing to the original PCA method while maintaining the high spatial quality of the original PCA.
机译:主成分分析(PCA)方法是一种流行的融合方法,可提高其效率并提高空间分辨率。但是,在PCA中经常会发现频谱失真。在本文中,我们提出了一种自适应PCA方法来增强融合图像的光谱质量。注入到多光谱(MS)图像的每个波段中的全色(PAN)图像的空间细节量由加权矩阵适当地确定,该加权矩阵由PAN图像的边缘,MS图像的边缘定义以及MS频段之间的比例。为了证明该方法的有效性,引入了定性的视觉和定量分析。相关系数(CC),光谱差异(SPD)和光谱角度映射器(SAM)用于测量每个融合波段图像的光谱质量。计算Q指数以评估所有融合频带整体的整体频谱质量。空间质量通过平均梯度(AG)和标准偏差(STD)进行评估。实验结果表明,该方法在保持原始PCA较高空间质量的同时,与原始PCA方法相比,极大地提高了光谱质量。

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