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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >A RADIOMETRIC NORMALIZATION METHOD OF CONTROLLING NO-CHANGED SET (CNCS) FOR DIVERSE LANDCOVER USING MULTI-SENSOR DATA
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A RADIOMETRIC NORMALIZATION METHOD OF CONTROLLING NO-CHANGED SET (CNCS) FOR DIVERSE LANDCOVER USING MULTI-SENSOR DATA

机译:使用多传感器数据控制不同Landcover的无改变集(CNC)的辐射算法方法

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The accurate acquisition of land surface reflectance (SR) data determines the accuracy of ground objects recognition, classification and land surface parameter inversion using remote sensing data, which is the basis of remote sensing data application. In this study, a Control No-Changed Set (CNCS) radiometric normalization method is proposed to realize spectral information transformation of multi-sensor data, which is based on the Iteratively Reweighted Multivariate Alteration Detection (IR-MAD), and includes automatic selection and step-by-step optimization of no-change pixels. The No-Changed set (NC) is obtained by selecting the original no-change pixels between the target image and the reference image according to the linear relationship. In the obtained original no-change regions, IR-MAD rules with iterative control are used to fix the final no-change pixels, after regression modeling and calculation, the normalized images are obtained. The method is tested on multi-images from multi-sensors in three groups of experiments (GF-1 WFV and Landsat-8 OLI, GF-1 PMS and Sentinel-2 MSI, and Landsat-8 OLI and Sentinel-2 MSI) with different landcover areas. The results of radiometric normalization are evaluated qualitatively and quantitatively. The data of the three groups of experiments have a high correlation (correlation coefficient r values 0.85), indicating that they can be used together as complementary data. The Root Mean Squared Error (RMSE) values calculate from the NC between the reference and normalized target images are much smaller than those between the reference and original target images. The radiometric colour composition effects, and the typical ground objects spectral reflective curves of the reference and normalized target images are very similar after radiometric normalization. These results indicate that the CNCS method considers the linear relationship of the no-change pixels and is effective, stable, and can be used to improve the consistency of SR of multi-images from multi-sensors.
机译:使用遥感数据确定接地物体识别,分类和陆地参数反转的准确获取确定地面对象识别,分类和陆地面参数反转的准确性,这是遥感数据应用的基础。在本研究中,提出了一种控制无变化的集(CNC)辐射归一化方法来实现多传感器数据的光谱信息转换,这是基于迭代重新重量的多变量改变检测(IR-MAD),并且包括自动选择和逐步优化无变更像素。通过根据线性关系选择目标图像和参考图像之间的原始无变化像素来获得不改变的集合(NC)。在所获得的原始无变化区域中,使用迭代控制的IR-MAD规则用于修复最终无变化像素,在回归建模和计算之后,获得归一化图像。该方法在三组实验中的多传感器(GF-1 WFV和Landsat-8 Oli,GF-1 PM和Sentinel-2 MSI,以及Landsat-8 Oli和Sentinel-2 MSI)上测试了该方法。不同的土地领域。定性和定量评估辐射算法的结果。三组实验的数据具有高相关(相关系数R值> 0.85),表明它们可以用作互补数据。从参考和归一化目标图像之间的NC计算的根平均平方误差(RMSE)值远小于参考和原始目标图像之间的NC。在辐射归一化之后,辐射颜色组成效应和参考和归一化目标图像的典型地对象的光谱反射曲线非常相似。这些结果表明,CNCS方法考虑了无变化像素的线性关系,并且是有效的,稳定的,并且可用于提高来自多传感器的多图像SR的一致性。

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