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Global and local Gram-Schmidt methods for hyperspectral pansharpening

机译:用于高光谱泛锐化的全局和局部Gram-Schmidt方法

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Pansharpening algorithms enable to produce synthetic data with high spatial details and spectral diversity by combining a panchromatic image with multispectral or hyperspectral data. In classical approaches the details extracted from the panchromatic image are introduced into the original multichannel image through injection gains, which can be spatially variant on the image. In this paper we analyze several methods for partitioning an image into regions in which the pixels will share the same injection coefficients. Gram-Schmidt pansharpening methods are used as paradigmatic examples for assessing the performance of global and local gain estimation strategies, using hyperspectral data acquired by sensors mounted on one (Earth Observing-1) or multiple (PROBA and Quick-bird) satellite platforms.
机译:全色锐化算法通过将全色图像与多光谱或高光谱数据相结合,可以生成具有高空间细节和光谱多样性的合成数据。在经典方法中,从全色图像中提取的细节通过注入增益被引入到原始多通道图像中,该注入增益可以在图像上发生空间变化。在本文中,我们分析了几种将图像划分为像素将共享相同注入系数的区域的方法。 Gram-Schmidt锐化方法用作评估全局和局部增益估计策略性能的范例,使用安装在一个(地球观测1)或多个(PROBA和Quick-bird)卫星平台上的传感器获取的高光谱数据。

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