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首页> 外文期刊>International journal of applied earth observation and geoinformation >Land cover change assessment using decision trees, support vector machines and maximum likelihood classification algorithms
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Land cover change assessment using decision trees, support vector machines and maximum likelihood classification algorithms

机译:使用决策树,支持向量机和最大似然分类算法进行土地覆盖变化评估

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Land cover change assessment is one of the main applications of remote sensed data. A number of pixel based classification algorithms have been developed over the past years for the analysis of remotely sensed data. The most notable include the maximum likelihood classifier (MLC), support vector machines (SVMs) and the decision trees (DTs). The DTs in particular offer advantages not provided by other approaches. They are computationally fast and make no statistical assumptions regarding the distribution of data. The challenge to using DTs lies in the determination of the "best" tree structure and the decision boundaries. Recent developments in the field of data mining have however, provided an alternative for overcoming the above shortcomings. In this study, we analysed the potential of DTs as one technique for data mining for the analysis of the 1986 and 2001 Landsat TM and ETM+ datasets, respectively. The results were compared with those obtained using SVMs, and MLC. Overall, acceptable accuracies of over 85% were obtained in all the cases. In general, the DTs performed better than both MLC and SVMs.
机译:土地覆被变化评估是遥感数据的主要应用之一。过去几年中,已经开发了许多基于像素的分类算法,用于分析遥感数据。最值得注意的包括最大似然分类器(MLC),支持向量机(SVM)和决策树(DT)。 DT特别具有其他方法无法提供的优势。它们计算速度快,并且不对数据分布进行统计假设。使用DT的挑战在于确定“最佳”树结构和决策边界。但是,数据挖掘领域的最新发展为克服上述缺点提供了一种替代方法。在这项研究中,我们分析了DT作为数据挖掘技术的潜力,分别用于分析1986年和2001年的Landsat TM和ETM +数据集。将结果与使用SVM和MLC获得的结果进行比较。总体而言,在所有情况下均获得了超过85%的可接受精度。通常,DT的性能优于MLC和SVM。

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