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A quantitative method to evaluate the performance of topographic correction models used to improve land cover identification

机译:评价用于改善土地覆盖识别的地形校正模型性能的定量方法

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Topographic correction methods have been widely used prior to land cover identification in sloping terrain because the topographic variation on the Earth's surface can interfere with the classifications. The topographic correction involves the normalization of brightness or surface reflectance values from the slanted to the horizontal plane. Several topographic correction models have been proposed, and a quantitative evaluation method is needed for these models because the performance can vary according to the surface cover types and spectral bands. In this study, we proposed an efficient method to evaluate the performance of topographic correction models through measuring the histogram structural similarity (HSSIM) index estimated from the sunlit and sun-shaded slope areas before and after the correction. We tested the HSSIM index by using three different land cover types derived from Landsat-8 Operational Land Imager (OLI) images and eight commonly used topographic correction models. When the proposed HSSIM index was compared with the visual analysis technique, the results matched exactly. Using the HSSIM index, the best correction methods were then determined, and the best ones included the statistical-empirical or SCS+C methods (where SCS+C refers to the sun-canopy-sensor plus C-correction) for the R, G, and B bands and the Minnaert+SCS method for the NIR, SWIR-1, and SWIR-2 bands. These results indicate that (i) the HSSIM index enables quantitative performance evaluations of topographic correction models and (ii) the HSSIM index can be used to determine the best topographic correction method for particular land cover identification applications.
机译:由于在地球表面上的地形变化会干扰分类,因此在坡地识别土地覆盖之前已广泛使用了地形校正方法。地形校正涉及从倾斜平面到水平面的亮度或表面反射率值的归一化。已经提出了几种地形校正模型,并且对于这些模型需要定量评估方法,因为性能会根据表面覆盖类型和光谱带而变化。在这项研究中,我们提出了一种有效的方法,可以通过测量校正前后的直角图结构相似性(HSSIM)指数(通过从阳光照射和遮光阴影区域估计)来评估地形校正模型的性能。我们通过使用从Landsat-8 Operational Land Imager(OLI)图像得出的三种不同的土地覆盖类型和八个常用的地形校正模型来测试HSSIM指数。将建议的HSSIM指数与视觉分析技术进行比较时,结果完全匹配。然后,使用HSSIM指数确定最佳的校正方法,最佳的校正方法包括R,G的统计经验方法或SCS + C方法(其中SCS + C表示太阳冠层传感器加C校正)。 ,B频段,以及针对NIR,SWIR-1和SWIR-2频段的Minnaert + SCS方法。这些结果表明,(i)HSSIM指数可对地形校正模型进行定量性能评估,并且(ii)HSSIM指数可用于确定特定土地覆盖识别应用的最佳地形校正方法。

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