期刊文献+

全局判别与局部稀疏保持HSI半监督特征提取 被引量:3

Global Discriminant and Local Sparse Preserving Semi-Supervised Feature Extraction for HSI
下载PDF
导出
摘要 针对高光谱图像存在“维数灾难”的问题,提出一种全局判别与局部稀疏保持的高光谱图像半监督特征提取算法(GLSSFE)。该算法通过LDA算法的散度矩阵保存有类标样本的全局类内判别信息和全局类间判别信息,结合利用半监督PCA算法对有类标和无类标样本进行主成分分析,保存样本的全局结构;利用稀疏表示优化模型自适应揭示样本数据间的非线性结构,将局部类间判别权值和局部类内判别权值嵌入半监督LPP 算法保留样本数据的局部结构,从而最大化同类样本的相似性和异类样本的差异性。通过1-NN和SVM两个分类器分别对Indian Pines和Pavia University 两个公共高光谱图像数据集进行分类,验证所提特征提取方法的有效性。实验结果表明,该GLSSFE算法最高总体分类精度分别达到89.10%和92.09%,优于现有的特征提取算法,能有效地挖掘高光谱图像的全局特征和局部特征,极大地提升高光谱图像的地物分类效果。 In view of the problem of“dimension disaster”in hyperspectral images, this paper proposes a Global discriminant and Local Sparse preserving Semi-supervised Feature Extraction algorithm(GLSSFE). The algorithm exploits the divergence matrix of LDA algorithm to preserve the global intra-class discriminant information and the global inter-class discriminant information of the labeled data. It utilizes semi-supervised PCA to preserve global structure of the labeled data and the unlabeled data. It uses sparse representation optimization model to find the nonlinear structure of data adaptively. Local discriminant weight of intra-class and local discriminant weight of inter-class are embedded in semi-supervised LPP algorithm to store the local structure of data, so as to maximize the similarities of the same class objects and differences of the different class objects. In this paper, the validity of the proposed feature extraction method is verified by 1-NN and SVM classifiers. With two public hyperspectral image datasets of Indian Pines and Pavia University, the proposed feature extraction method is verified effectively. The experimental results of GLSSFE show that the highest overall classification reaches 89.10% and 92.09% respectively. It is superior to the existing feature extraction algorithm, effectively mining global features and local features of hyperspectral images, enhancing object classification effect.
作者 黄冬梅 张晓桐 张明华 宋巍 HUANG Dongmei;ZHANG Xiaotong;ZHANG Minghua;SONG Wei(College of Information Technology, Shanghai Ocean University, Shanghai 201306, China;Shanghai University of Electric Power, Shanghai 200090, China)
出处 《计算机工程与应用》 CSCD 北大核心 2019年第20期184-191,共8页 Computer Engineering and Applications
基金 国家自然科学基金(No.41671431) 上海市科学技术委员会科研计划项目(No.15590501900) 上海市高校特聘教授(东方学者)项目(No.TP201638)
关键词 高光谱图像 半监督全局判别分析 半监督局部稀疏保持 特征提取 空间相关性 hyperspectral images semi-supervised global discriminant analysis semi-supervised local sparse preserving feature extraction spatial correlation
  • 相关文献

参考文献6

二级参考文献34

  • 1Bioucas Dias J M, Nascimento J M P. Hyperspectral subspace identification [J]. IEEE Transactions on Geoscience and Remote Sensing, 2008, 46(8): 2435-2445.
  • 2He J, Zbang I., Wang Q, et at. Using diffusion geometric coordinates for hyperspectral imagery representation [J]. IEEE Geoscienees and Remote Sensing Letters, 2009, 6 (4) : 767-771.
  • 3Zhang L P, Huang X. Object-oriented subspace analysis for airborne hyperspeetral remote sensing imagery [J]. Neurocomputing, 2009, 73(4/6): 927-936.
  • 4Dianat R, Kasaei S. Dimension reduction of remote sensing images by incorporating spatial and spectral properties [J]. International Journal of Electronics and Communications, 2010, 64(8): 729-732.
  • 5Turk M, Pentland A. Eigenfaces for recognition [J]. Journal of Cognitive Neuroscience, 1991, 3(1): 71-86.
  • 6Belhumeur P N, Hespanha J P, Kriegman D J. Eigenfaces Fisherfaces: recognition using class specific linear projection [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 1997, 19(7): 711-720.
  • 7Tenenbaum J B, de Silva V, l.angford J C. A global geometric framework for nonlinear dimensionality reduction [J]. Science, 2000, 290(5500): 2319-2323.
  • 8Roweis S T, Saul L K. Nonlinear dimensionality reduction by locally linear embedding [J]. Science, 2000, 290 (5500) : 2323-2326.
  • 9He X F, Cai D, Yan S C, et al. Neighborhood preserving embedding [C] //Proceedings of the 10th IEEE International Conference on Computer Vision. Los Alamitos: IEEE Computer Society Press, 2005, 2:1208-1213.
  • 10Xiao R, Zhao Q J, Zhang D, et al. Facial expression recognition on multiple manifolds [J]. Pattern Recognition, 2011, 44(1): 107-116.

共引文献276

同被引文献32

引证文献3

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部