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An assessment of the effectiveness of decision tree methods for land cover classification

机译:决策树方法在土地覆被分类中的有效性评估

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摘要

Choice of a classification algorithm is generally based upon a number of factors, among which are availability of software, ease of use, and performance, measured here by overall classification accuracy. The maximum likelihood (ML) procedure is, for many users, the algorithm of choice because of its ready availability and the fact that it does not require an extended training process. Artificial neural networks (ANNs) are now widely used by researchers, but their operational applications are hindered by the need for the user to specify the configuration of the network architecture and to provide values for a number of parameters, both of which affect performance. The ANN also requires an extended training phase. In the past few years, the use of decision trees (DTs) to classify remotely sensed data ha's increased. Proponents of the method claim that it has a number of advantages over the ML and ANN algorithms. The DT is computationally fast, make no statistical assumptions, and can handle data that are represented on different measurement scales. Software to implement DTs is readily available over the Internet. Pruning of DTs can make them smaller and more easily interpretable, while the use of boosting techniques can improve performance. In this study, separate test and training data sets from two different geographical areas and two different sensors-multispectral Landsat ETM+ and hyperspectral DAIS-are used to evaluate the performance of univariate and multivariate DTs for land cover classification. Factors considered are: the effects of variations in training data set size and of the dimensionality of the feature space, together with the impact of boosting, attribute selection measures, and pruning. The level of classification accuracy achieved by the DT is compared to results from back-propagating ANN and the ML classifiers. Our results indicate that the performance of the univariate DT is acceptably good in comparison with that of other classifiers, except with high-dimensional data. Classification accuracy increases linearly with training data set size to a limit of 300 pixels per class in this case. Multivariate DTs do not appear to perform better than univariate DTs. While boosting produces an increase in classification accuracy of between 3% and 6%, the use of attribute selection methods does not appear to be justified in terms of accuracy increases. However, neither the univariate DT nor the multivariate DT performed as well as the ANN or ML classifiers with high-dimensional data. (C) 2003 Elsevier Inc. All rights reserved. [References: 37]
机译:分类算法的选择通常基于许多因素,其中包括软件的可用性,易用性和性能,此处通过总体分类精度来衡量。对于许多用户来说,最大似然(ML)程序是首选算法,因为它具有随时可用的特性,并且不需要扩展的训练过程。人工神经网络(ANN)现在已被研究人员广泛使用,但是由于用户需要指定网络体系结构的配置并提供许多参数的值,因此它们的操作应用受到了阻碍,这两者都会影响性能。 ANN还需要延长培训阶段。在过去的几年中,使用决策树(DT)对遥感数据进行分类的趋势有所增加。该方法的支持者声称,与ML和ANN算法相比,它具有许多优势。 DT计算速度快,无需进行统计假设,并且可以处理以不同度量标准表示的数据。可以通过Internet轻松获得实现DT的软件。修剪DT可以使它们更小并且更易于解释,而使用增强技术可以提高性能。在这项研究中,分别使用来自两个不同地理区域和两个不同传感器(多光谱Landsat ETM +和高光谱DAIS)的测试和训练数据集来评估用于土地覆被分类的单变量和多变量DT的性能。考虑的因素包括:训练数据集大小和特征空间维数变化的影响,以及增强,属性选择措施和修剪的影响。将DT实现的分类准确性水平与反向传播ANN和ML分类器的结果进行比较。我们的结果表明,除了高维数据外,与其他分类器相比,单变量DT的性能令人满意。在这种情况下,分类精度随训练数据集大小的增加而线性增加,每个类别限制为300个像素。多元DT似乎没有比单变量DT更好。虽然提升会提高3%到6%之间的分类准确性,但就准确性的提高而言,使用属性选择方法似乎是不合理的。但是,单变量DT或多变量DT均不及具有高维数据的ANN或ML分类器执行。 (C)2003 Elsevier Inc.保留所有权利。 [参考:37]

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