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Effects of pre-processing methods on Landsat OLI-8 land cover classification using OBIA and random forests classifier

机译:使用OBIA和随机森林分类器预处理方法对Landsat Oli-8土地覆盖分类的影响

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摘要

The application of Landsat satellite imagery in land cover classification is affected by atmospheric and topographic errors, which have led to the development of different correction methods. In this study, moderate resolution atmospheric transmission (MODTRAN) and dark object subtraction (DOS) atmospheric corrections, and cosine topographic correction were evaluated individually and combined in a heterogeneous landscape in Zambia. These pre-processing methods were tested using a combination of object-based image analysis (OBIA) and Random Forests (RF) non-parametric classifier (hereafter referred to as OBIA-RF). This assessment aimed at understanding the combined effects of different pre-processing methods and the OBIA-RF classification method on the accuracy of Landsat operational land (OLI-8) imagery with different spatial resolutions. Here, we used pansharpened and standard Landsat OLI-8 images with 15 and 30 m spatial resolutions, respectively. The results showed that non pre-processed images reached a classification accuracy of 68% for pansharpened and 66% for standard Landsat OLI-8. Classification accuracy improved to 93% (pansharpened) and 86% (standard) when combined MODTRAN and cosine topographic correction pre-processing were applied. The results highlight the importance of pansharpening, as well as atmospheric and topographic corrections for Landsat OLI-8 imagery, when used as input in OBIA classification with the RF classifier.
机译:Landsat卫星图像在陆地覆盖分类中的应用受到大气和地形错误的影响,导致不同校正方法的开发。在本研究中,单独评估适度分辨率的大气传输(MODTRAN)和暗对象减法(DOS)大气校正,以及余弦形貌校正,并在赞比亚的异质景观中进行。使用基于对象的图像分析(OBIA)和随机森林(RF)非参数分类器(以下称为OBIA-RF)的组合来测试这些预处理方法。该评估旨在了解不同预处理方法的综合影响和OBIA-RF分类方法对不同空间分辨率的兰德斯运营土地(OLI-8)图像的准确性。在这里,我们使用Pansharpened和标准Landsat Oli-8图像分别具有15和30米的空间分辨率。结果表明,非预处理的图像达到了Pansharpened的68%的分类精度,标准Landsat Oli-8的66%。分类准确性提高到93%(PANSharpened)和86%(标准),当应用组合的Modtran和余弦形貌校正预处理时。结果突出了Pansharpening的重要性,以及LANDSAT OLI-8图像的大气和地形校正,用作RF分类器的OBIA分类输入时。

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