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Study on Decision Tree Land Cover Classification Based on MODIS Data

机译:基于MODIS数据的决策树土地覆盖分类研究

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There are two popular decision tree calculations in the international world-CRT and C4.5, and boosting and bagging technology, which are new classification technology in mechanical study field. To study the decision tree and new technology's use in remote sensing classification, we use 250 m resolution data of North east China to do land cover and classification study. The result shows that decision tree can improve classification accuracy than MLC when there is enough training sample, but when there is not enough sample, its performance is worse than MLC. It is also found that, in production of decision tree, CART is better than C4.5 in classification accuracy and tree structure, while improvement of classification accuracy is up to the construction of tree structure and trimming. When boosting is introduced to CART, the classification accuracy is improved to 25.6% from 18.5%.
机译:国际世界CRT和C4.5中有两个流行的决策树计算,以及促进和装袋技术,是机械研究领域的新分类技术。为研究决策树和新技术在遥感分类中使用,我们使用250米的东北地区分辨率数据进行土地覆盖和分类研究。结果表明,当有足够的训练样本时,决策树可以提高分类精度,而是当样品没有足够的样品时,其性能比MLC更差。还发现,在决策树的生产中,推车在分类精度和树结构中优于C4.5,同时提高分类精度是达到树结构的构建和修剪。在推出推动到购物车时,分类准确度从18.5%提高到25.6%。

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