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Decision tree approach for classification of remotely sensed satellite data using open source support

机译:使用开源支持对遥感卫星数据进行分类的决策树方法

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In this study, an attempt has been made to develop a decision tree classification (DTC) algorithm for classification of remotely sensed satellite data (Landsat TM) using open source support. The decision tree is constructed by recursively partitioning the spectral distribution of the training dataset using WEKA, open source data mining software. The classified image is compared with the image classified using classical ISODATA clustering and Maximum Likelihood Classifier (MLC) algorithms. Classification result based on DTC method provided better visual depiction than results produced by ISODATA clustering or by MLC algorithms. The overall accuracy was found to be 90% (kappa = 0.88) using the DTC, 76.67% (kappa = 0.72) using the Maximum Likelihood and 57.5% (kappa = 0.49) using ISODATA clustering method. Based on the overall accuracy and kappa statistics, DTC was found to be more preferred classification approach than others.
机译:在这项研究中,已经尝试开发一种决策树分类(DTC)算法,以使用开放源代码支持对遥感卫星数据(Landsat TM)进行分类。通过使用开放源数据挖掘软件WEKA递归划分训练数据集的频谱分布来构造决策树。将分类的图像与使用经典ISODATA聚类和最大似然分类器(MLC)算法分类的图像进行比较。与ISODATA聚类或MLC算法产生的结果相比,基于DTC方法的分类结果提供了更好的视觉描绘。使用DTC时,总体精度为90%(kappa = 0.88),使用最大似然法时为76.67%(kappa = 0.72),而使用ISODATA聚类方法则为57.5%(kappa = 0.49)。根据总体准确性和kappa统计数据,发现DTC比其他方法更可取。

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