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PCA与移动窗小波变换的高光谱决策融合分类
引用本文:叶珍,何明一.PCA与移动窗小波变换的高光谱决策融合分类[J].中国图象图形学报,2015,20(1):132-139.
作者姓名:叶珍  何明一
作者单位:西北工业大学电子信息学院,西安,710072
基金项目:国家自然科学基金项目(61171154,61420106007)
摘    要:目的 高光谱数据具有较高的谱间分辨率和相关性,给分类处理带来了一定的困难.为了提高分类精度,提出一种结合PCA与移动窗小波变换的高光谱决策融合分类算法.方法 首先,利用相关系数矩阵对原始高光谱数据进行波段分组;然后,利用主成分分析对每组数据进行谱间降维;再根据提出的移动窗小波变换法进行空间特征提取;最后,采用线性意见池(LOP)决策融合规则对多分类器的分类结果进行融合.结果 采用两组来自不同传感器的数据进行实验,所提算法的分类精度和Kappa系数均高于已有的5种分类算法.与SVM-RBF算法相比,本文算法的分类精度高出了8%左右.结论 实验结果表明,本文算法充分挖掘了高光谱图像的谱间-空间信息,能有效提高分类正确率,在小样本情况下和噪声环境中也具有良好的分类性能.

关 键 词:高光谱分类  主成分分析  小波变换  决策融合
收稿时间:6/5/2014 12:00:00 AM
修稿时间:9/1/2014 12:00:00 AM

PCA and windowed wavelet transform for hyperspectral decision fusion classification
Ye Zhen and He Mingyi.PCA and windowed wavelet transform for hyperspectral decision fusion classification[J].Journal of Image and Graphics,2015,20(1):132-139.
Authors:Ye Zhen and He Mingyi
Affiliation:Electronics and Information school, Northwestern Polytechnical University, Xi'an 710072, China;Electronics and Information school, Northwestern Polytechnical University, Xi'an 710072, China
Abstract:Objective High spectral resolution and correlation hinder the application of classification in hyperspectral data. To improve classification accuracy, a hyperspectral decision fusion classification method based on principal component analysis (PCA) and windowed wavelet transform is proposed in this study. Method A correlation coefficient matrix is used to group original hyperspectral data. PCA is applied to reduce the spectral dimensions of data for each group. The proposed windowed wavelet transform method is used to extract spatial features. Linear opinion pool is employed to fuse the classification results from multi-classifiers. Result Using two hyperspectral data sets from different sensors, the proposed algorithm obtain higher classification accuracy and Kappa coefficient than five existing algorithms. The classification accuracy of the proposed algorithm outperforms that of support vector machine-radial basis function (SVM-RBF) by approximately 8%. Conclusion Experimental results show that the proposed method can explore spectral-spatial information from hyperspectral imagery, improve classification accuracy efficiently, and provide outstanding classification performance under a small sample size and noisy environments.
Keywords:hyperspectral classification  principal component analysis  wavelet transform  decision fusion
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