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MS + Pan image fusion by an enhanced Gram-Schmidt spectral sharpening

机译:通过增强的Gram-Schmidt光谱锐化实现MS + Pan图像融合

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In this work, a simple pre-processing patch is introduced before the Gram-Schmidt (GS) spectral sharpening method (as implemented in ENVI) such that the resulting fused multi-spectral (MS) data exhibit higher sharpness and spectral quality. This is achieved by defining a generalized intensity (GI) component as a weighted average of the MS bands, with weights taken either as percentages of overlap between the spectral responses of individual bands and the spectral response of panchromatic (Pan), or better as regression coefficients between the MS bands and the decimated Pan image. In the former case, the weights are pre-calculated for each sensor. In the latter case, the weights are calculated by applying a multivariate regression to the data that are being fused. The above GI component is used as low-resolution approximation of the Pan image. Experimental results carried out on very-high resolution IKONOS data demonstrate that the proposed enhanced GS adaptive (GSA) method visually outperforms both modes of the ENVI implementation of GS, especially in true colour displays. Quantitative scores performed on spatially degraded data by means of such parameters as Wald's ERGAS and the novel Q4 score index based on quaternion theory, confirm the superiority of the enhanced GS method over its baseline.
机译:在这项工作中,在Gram-Schmidt(GS)光谱锐化方法(如ENVI中实施)之前引入了一个简单的预处理补丁,以使所得的融合多光谱(MS)数据显示出更高的锐度和光谱质量。这是通过将广义强度(GI)分量定义为MS波段的加权平均值来实现的,权重可以作为单个波段的光谱响应与全色(Pan)光谱响应之间的重叠百分比,也可以作为回归更好MS频段和抽取后的Pan图像之间的系数。在前一种情况下,将为每个传感器预先计算权重。在后一种情况下,权重是通过对要融合的数据应用多元回归来计算的。上面的GI分量用作Pan图像的低分辨率近似值。在非常高分辨率的IKONOS数据上进行的实验结果表明,所提出的增强型GS自适应(GSA)方法在视觉上优于GS的ENVI实现的两种模式,尤其是在真彩色显示器中。借助Wald的ERGAS等参数以及基于四元数理论的新颖Q4评分指数对空间退化数据进行的定量评分,证实了增强型GS方法优于其基线的优越性。

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