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Radiometric Normalization of Multi-Temporal Images Using Kernel Canonical Correlation Analysis with Linear, Polynomial and Gaussian Kernels

机译:使用线性,多项式和高斯核的核典范相关分析对多时相图像进行辐射归一化

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Here a kernel method based on the established method known as kernel canonical correlation analysis (kCCA) is introduced to perform radiometric normalization of Chinese Gaofen1 (GF1) satellite images. It minimize image spectral differences between multi-temporal images without distinction of imaging conditions or the difference of reflectivity and perfectly eliminating the effects of nonlinear changes of features. We conduct radiometric normalization experiment with linear, polynomial and Gaussian (rbf) kernel functions to evaluate the performance from the characteristics of NIFs distribution and radiometric normalization results. The result of polynomial kernel has the highest similarity with the reference image, which means polynomial kernel is best suited for radiometric normalization.
机译:本文介绍了一种基于已建立的称为核规范相关分析(kCCA)的核方法,以对中国高分1(GF1)卫星图像进行辐射归一化。它将多时间图像之间的图像光谱差异减至最小,而无需区分成像条件或反射率,并完美消除了特征非线性变化的影响。我们使用线性,多项式和高斯(rbf)核函数进行辐射归一化实验,以根据NIF分布的特征和辐射归一化结果评估性能。多项式核的结果与参考图像具有最高的相似性,这意味着多项式核最适合于辐射归一化。

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