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Classifying Complex Mountainous Forests with L-Band SAR and Landsat Data Integration: A Comparison among Different Machine Learning Methods in the Hyrcanian Forest

机译:利用L波段SAR和Landsat数据集成对复杂的山区森林进行分类:Hyrcanian森林中不同机器学习方法的比较

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Forest environment classification in mountain regions based on single-sensor remote sensing approaches is hindered by forest complexity and topographic effects. Temperate broadleaf forests in western Asia such as the Hyrcanian forest in northern Iran have already suffered from intense anthropogenic activities. In those regions, forests mainly extend in rough terrain and comprise different stand structures, which are difficult to discriminate. This paper explores the joint analysis of Landsat7/ETM+, L-band SAR and their derived parameters and the effect of terrain corrections to overcome the challenges of discriminating forest stand age classes in mountain regions. We also verified the performances of three machine learning methods which have recently shown promising results using multisource data; support vector machines (SVM), neural networks (NN), random forest (RF) and one traditional classifier (i.e., maximum likelihood classification (MLC)) as a benchmark. The non-topographically corrected ETM+ data failed to differentiate among different forest stand age classes (average classification accuracy (OA) = 65%). This confirms the need to reduce relief effects prior data classification in mountain regions. SAR backscattering alone cannot properly differentiate among different forest stand age classes (OA = 62%). However, textures and PolSAR features are very efficient for the separation of forest classes (OA = 82%). The highest classification accuracy was achieved by the joint usage of SAR and ETM+ (OA = 86%). However, this shows a slight improvement compared to the ETM+ classification (OA = 84%). The machine learning classifiers proved t o be more robust and accurate compared to MLC. SVM and RF statistically produced better classification results than NN in the exploitation of the considered multi-source data.
机译:森林复杂性和地形效应阻碍了基于单传感器遥感方法的山区森林环境分类。西亚的温带阔叶林,例如伊朗北部的Hyrcanian森林,已经遭受了强烈的人为活动。在这些地区,森林主要在崎rough的地形中延伸,并具有不同的林分结构,很难区分。本文探讨了Landsat7 / ETM +,L波段SAR及其衍生参数的联合分析以及地形校正的作用,以克服区分山区林分年龄的挑战。我们还验证了三种机器学习方法的性能,这些方法最近在多源数据上显示了可喜的结果。支持向量机(SVM),神经网络(NN),随机森林(RF)和一种传统分类器(即最大似然分类(MLC))作为基准。经非地形校正的ETM +数据无法区分不同林分年龄等级(平均分类准确度(OA)= 65%)。这证实了在山区进行数据分类之前需要减少浮雕效果的必要性。单独的SAR反向散射无法正确区分不同林分年龄等级(OA = 62%)。但是,纹理和PolSAR特征对于分离森林类别非常有效(OA = 82%)。 SAR和ETM +的联合使用实现了最高的分类精度(OA = 86%)。但是,与ETM +分类相比,这显示出轻微的改进(OA = 84%)。事实证明,与MLC相比,机器学习分类器更强大,更准确。在利用多源数据方面,SVM和RF在统计上比NN产生更好的分类结果。

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