中山公墓SPOT5影像融合分类方法研究

Chunjing Li, Da Xu
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引用次数: 3

摘要

本文采用色调-强度-饱和度(HIS)、主成分分析(PCA)、Kauth-Thomax (K-T)变换、线性加权变换、Brovey融合和小波变换融合6种不同的数据融合算法对SPOT5全色图像与多光谱图像进行融合。我们从主观和客观两个方面对融合图像进行评价。研究表明,融合后的图像在保持原始多光谱图像基本光谱含量的前提下,具有较高的空间分辨率,在视觉效果和分类精度上均有较大提高。在6种融合算法中,采用Brovey融合、小波变换和PCA变换的图像效果较好,可应用于森林资源调查。本文引入4种分类方法,将研究区划分为3种森林类型和其他覆盖类型,共11个类。通过尝试引入决策树思想,最高分类准确率达到74.60%,总kappa系数为0.6972。可以看出,整体分类精度和kappa系数得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on methods of fusion and classification using SPOT5 image of ZhongShan cemetery
In this paper, efforts were made to merge SPOT5 panchromatic image with multispectral images using six different data fusion algorithms, which were Hue-Intensity-Saturation(HIS), Principle Component Analysis(PCA), Kauth-Thomax (K-T) transform, Linear-weighted transform, Brovey fusion and Wavelet transform fusion. We evaluated the fusion images in both subjective and objective factors. The research showed that the fused images had higher spatial resolution while maintaining the basic spectral contents of the original multispectral images, the visual effects and the accuracy of the classification using fused images were improved greatly. Among the six fusion algorithms, the images using Brovey fusion, Wavelet transform and PCA transform were better, which can be applied in forest resource survey. Four classification methods were introduced to this paper, and the study region was classified into three forest types and other coverage type, which included eleven classes. Through attempting to introduce into decision tree idea, the highest classification accuracy reached to 74.60%, the whole kappa coefficient was 0.6972. It can be seen that the whole classification accuracy and kappa coefficient were improved.
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