基于C5.0多组合分类器决策树的高光谱分类新方法

Meng Wang, Kun Gao, Li-jing Wang, Xiang-hu Miu
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引用次数: 15

摘要

在高光谱图像分类应用中,单分类器难以解决高维问题。多个分类器的组合可以充分利用现有分类器的互补性,从而具有更好的分类性能。提出了一种基于C5.0决策树的新型多分类器。首先通过小波-主成分分析变换算法降低高光谱维数;然后利用最小距离、最大似然和支持向量机三个监督分类器,结合C5.0决策树实现高光谱分类。基于AVIRIS高光谱图像数据的实验表明,与单个子分类器相比,多个组合分类器可以获得更高的分类精度。该方法可以有效地降低特征维数,提高分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Hyperspectral Classification Method Based on C5.0 Decision Tree of Multiple Combined Classifiers
It is difficult for a single classifier to resolve the problem of high dimension in the hyperspectral image classification applications. Combination of multiple classifiers can make full use of the complementary of the existing classifiers, thus owns better classification performance. A novel multiple classifiers based on C5.0 decision tree is proposed. It reduces the hyperspectral dimension through wavelet-PCA transform algorithm firstly. Then three supervised classifiers, namely Minimum Distance, Maximum Likelihood and SVM, combined by C5.0 decision tree, are used to realize hyperspectral classification. Experiments based on AVIRIS hyperspectral image data show that higher classification accuracy may be achieved via the multiple combined classifiers than a single sub-classifier. The proposed method can reduce the dimension of features and improve the classification performance efficiently.
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