Thematic information extraction in high-resolution remote sensing image based on weighted PCA and VBICA

Lan Liu, Chengfan Li, Yong-mei Lei, Junjuan Zhao, Xian-kun Sun
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Abstract

The thematic information extraction has been a difficult problem in high-resolution remote sensing application. Principal component analysis (PCA) is able to extract data's independent features on the basis of the second-order statistics, the variational Bayesian independent component analysis (VBICA) not only overcome the inconsistency between the standard ICA model and remote sensing image but also decrease the computational complexity. In view of the characteristics of high-resolution remote sensing, a thematic information extraction method based on weighted PCA and VBICA is presented in this article, and IKONOS high-resolution remote sensing image experiments are performed. The result shows that the classification accuracy of proposed method reaches 78.30% under certain conditions with the suitable number of eigenvectors and weighted values.
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基于加权PCA和VBICA的高分辨率遥感图像主题信息提取
专题信息提取一直是高分辨率遥感应用中的一个难题。主成分分析(PCA)能够在二阶统计量的基础上提取数据的独立特征,变分贝叶斯独立成分分析(VBICA)不仅克服了标准主成分分析模型与遥感图像不一致的问题,而且降低了计算复杂度。针对高分辨率遥感的特点,提出了一种基于加权PCA和VBICA的主题信息提取方法,并进行了IKONOS高分辨率遥感图像实验。结果表明,在选取合适的特征向量个数和加权值的条件下,该方法的分类准确率达到78.30%。
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