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Fast Weighted Least Squares pan-sharpening

机译:快速加权最小二乘泛锐化

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摘要

We present a fast pan-sharpening method, namely FWLS, which is based on unsupervised segmentation of the original multispectral (MS) data for improved parameter estimation in a weighted least square fusion scheme. The use of simple thresholding of the normalized difference vegetation index (NDVI) dramatically reduces the computation time with respect to the recently proposed WLS method which is based on accurate supervised classification through kernel support vector machines. The fusion performances of the FWLS algorithm are the same that those obtained by the WLS algorithm, and even higher in some cases, since accurate extraction of vegetated/non-vegetated areas is only needed and high-performance supervised classification is generally not re-quired for fusion parameter estimation. Experimental results and comparisons to state-of-the-art fusion methods are reported on Ikonos and QuickBird data. Both visual and objective quality assessment of the fusion results confirm the validity of the proposed FWLS algorithm
机译:我们介绍了一种快速的平移方法,即FWL,基于原始多光谱(MS)数据的无监督分割,以改善加权最小二乘融合方案中的参数估计。使用归一化差异植被指数(NDVI)的简单阈值阈值大大减少了关于最近提出的WLS方法的计算时间,该方法是通过内核支持向量机的准确监督分类。 FWLS算法的融合性能是通过WLS算法获得的那些,并且在某些情况下,甚至在某些情况下甚至更高,因为只需要准确提取植被/非植被区域,并且通常不会重新抑制高性能监督分类用于融合参数估计。在IKONOS和Quickbird数据上报告了最先进的融合方法的实验结果和比较。融合结果的视觉和客观质量评估都证实了所提出的FWLS算法的有效性

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