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Evaluation of different machine learning methods for land cover mapping of a Mediterranean area using multi-seasonal Landsat images and Digital Terrain Models

机译:使用多季节Landsat影像和数字地形模型评估地中海地区土地覆盖制图的不同机器学习方法

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Land cover monitoring using digital Earth data requires robust classification methods that allow the accurate mapping of complex land cover categories. This paper discusses the crucial issues related to the application of different up-to-date machine learning classifiers: classification trees (CT), artificial neural networks (ANN), support vector machines (SVM) and random forest (RF). The analysis of the statistical significance of the differences between the performance of these algorithms, as well as sensitivity to data set size reduction and noise were also analysed. Landsat-5 Thematic Mapper data captured in European spring and summer were used with auxiliary variables derived from a digital terrain model to classify 14 different land cover categories in south Spain. Overall, statistically similar accuracies of over 91% were obtained for ANN, SVM and RF. However, the findings of this study show differences in the accuracy of the classifiers, being RF the most accurate classifier with a very simple parameterization. SVM, followed by RF, was the most robust classifier to noise and data reduction. Significant differences in their performances were only reached for thresholds of noise and data reduction greater than 20% (noise, SVM) and 25% (noise, RF), and 80% (reduction, SVM) and 50% (reduction, RF), respectively.
机译:使用数字地球数据进行的土地覆被监测需要可靠的分类方法,这些方法可以准确绘制复杂的土地覆被类别。本文讨论了与最新的机器学习分类器的应用相关的关键问题:分类树(CT),人工神经网络(ANN),支持向量机(SVM)和随机森林(RF)。还分析了这些算法性能之间差异的统计显着性,以及对数据集缩减和噪声的敏感性。欧洲春季和夏季捕获的Landsat-5专题测绘仪数据与从数字地形模型得出的辅助变量一起用于对西班牙南部的14种不同土地覆盖类别进行分类。总体而言,ANN,SVM和RF的统计准确性达到91%以上。但是,这项研究的结果表明分类器的准确性存在差异,它是RF的最准确分类器,具有非常简单的参数设置。支持向量机(SVM),其次是射频(RF),是减少噪声和数据的最强大分类器。仅当噪声和数据减少的阈值大于20%(噪声,SVM)和25%(噪声,RF),80%(减少,SVM)和50%(减少,RF)时,才达到了性能上的显着差异,分别。

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