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Applying tree-based ensemble algorithms to the classification of ecological zones using multi-temporal multi-source remote-sensing data

机译:基于树的集成算法在多时相多源遥感数据分类中的应用

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The decision tree method has grown fast in the past two decades and its performance in classification is promising. The tree-based ensemble algorithms have been used to improve the performance of an individual tree. In this study, we compared four basic ensemble methods, that is, bagging tree, random forest, AdaBoost tree and AdaBoost random tree in terms of the tree size, ensemble size, band selection (BS), random feature selection, classification accuracy and efficiency in ecological zone classification in Clark County, Nevada, through multi-temporal multi-source remote-sensing data. Furthermore, two BS schemes based on feature importance of the bagging tree and AdaBoost tree were also considered and compared. We conclude that random forest or AdaBoost random tree can achieve accuracies at least as high as bagging tree or AdaBoost tree with higher efficiency; and although bagging tree and random forest can be more efficient, AdaBoost tree and AdaBoost random tree can provide a significantly higher accuracy. All ensemble methods provided significantly higher accuracies than the single decision tree. Finally, our results showed that the classification accuracy could increase dramatically by combining multi-temporal and multi-source data set.View full textDownload full textRelated var addthis_config = { ui_cobrand: "Taylor & Francis Online", services_compact: "citeulike,netvibes,twitter,technorati,delicious,linkedin,facebook,stumbleupon,digg,google,more", pubid: "ra-4dff56cd6bb1830b" }; Add to shortlist Link Permalink http://dx.doi.org/10.1080/01431161.2011.602651
机译:决策树方法在过去的二十年中发展迅速,其分类性能令人鼓舞。基于树的集成算法已用于提高单个树的性能。在这项研究中,我们比较了四种基本的集成方法,即装袋树,随机森林,AdaBoost树和AdaBoost随机树,它们的树大小,集成大小,带选择(BS),随机特征选择,分类准确性和效率内华达州克拉克县的生态区分类,通过多时相多源遥感数据进行。此外,还考虑并比较了基于装袋树和AdaBoost树的特征重要性的两种BS方案。我们得出的结论是,随机森林或AdaBoost随机树可以达到至少与套袋树或AdaBoost树一样高的准确度;尽管套袋树和随机森林可能更有效,但AdaBoost树和AdaBoost随机树可以提供更高的准确性。与单个决策树相比,所有集成方法都提供了更高的准确性。最后,我们的结果表明,通过组合多时相和多源数据集,分类的准确性可以大大提高。查看全文下载全文相关的var addthis_config = {ui_cobrand:“ Taylor&Francis Online”,services_compact:“ citeulike,netvibes,twitter ,technorati,可口,linkedin,facebook,stumbleupon,digg,google,更多”,发布号:“ ra-4dff56cd6bb1830b”};添加到候选列表链接永久链接http://dx.doi.org/10.1080/01431161.2011.602651

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