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首页> 外文期刊>International journal of remote sensing >Improved topographic correction of forest image data using a 3-D canopy reflectance model in multiple forward mode
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Improved topographic correction of forest image data using a 3-D canopy reflectance model in multiple forward mode

机译:在多向模式下使用3-D冠层反射率模型改进森林图像数据的地形校正

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In most forestry remote sensing applications in steep terrain, simple photometric and empirical (PE) topographic corrections are confounded as a result of stand structure and species assemblages that vary with terrain and the anisotropic reflective properties of vegetated surfaces. To address these problems, we present MFM-TOPO as a new physically-based modelling (PBM) approach for normalising topographically induced signal variance as a function of forest stand structure and sub-pixel scale components. MFM-TOPO uses the Li-Strahler geometric optical mutual shadowing (GOMS) canopy reflectance model in Multiple Forward Mode (MFM) to account for slope and aspect influences directly. MFM-TOPO has an explicit physical-basis and uses sun-canopy-sensor (SCS) geometry that is more appropriate than strictly terrain-based corrections in forested areas since it preserves the geotropic nature of trees (vertical growth with respect to the geoid) regardless of terrain, view and illumination angles. MFM-TOPO is compared against our recently developed SCS + C correction and a comprehensive set of other existing PE and SCS methods (cosine, C correction, Minnaert, statistical-empirical, SCS, and b correction) for removing topographically induced variance and for improving SPOT image classification accuracy in a Rocky Mountain forest in Kananaskis, Alberta Canada. MFM-TOPO removed the most terrain-based variance and provided the greatest improvement in classification accuracy within a species and stand density based class structure. For example, pine class accuracy was increased by 62% over shaded slopes, and spruce class accuracy was increased by 13% over more moderate slopes. In addition to classification, MFM-TOPO is suitable for retrieving biophysical parameters in mountainous terrain.
机译:在陡峭地形中的大多数林业遥感应用中,由于林分结构和物种组合随地形和植被表面的各向异性反射特性而变化,因此简单的光度和经验(PE)地形校正是混杂的。为了解决这些问题,我们将MFM-TOPO作为一种新的基于物理的建模(PBM)方法,用于归一化地形诱导的信号方差,作为森林林分结构和亚像素尺度分量的函数。 MFM-TOPO在多重前向模式(MFM)中使用Li-Strahler几何光学互阴影(GOMS)冠层反射率模型来直接考虑坡度和坡向影响。 MFM-TOPO具有明确的物理基础,并且使用林冠层传感器(SCS)几何形状,比在林区中严格基于地形的校正更合适,因为它保留了树木的地性性质(相对于大地水准面垂直生长)无论地形,视野和照明角度如何。将MFM-TOPO与我们最近开发的SCS + C校正以及其他全面的PE和SCS方法(余弦,C校正,Minnaert,统计经验,SCS和b校正)进行了比较,以消除地形引起的方差并改善加拿大亚伯纳省卡纳纳斯基斯落基山森林中SPOT图像分类的准确性。 MFM-TOPO消除了大多数基于地形的差异,并在基于物种和林分密度的分类结构中提供了最大的分类精度改进。例如,在有阴影的斜坡上,松树等级的准确度提高了62%,在较中等的斜坡上,云杉分类的准确度提高了13%。除分类外,MFM-TOPO还适用于检索山区地形的生物物理参数。

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