Abstract

Abstract. Over the past thirty years, the hyperspectral remote sensing technology is attracted more and more attentions by the researchers. The dimension reduction technology for hyperspectral remote sensing image data is one of the hotspots in current research of hyperspectral remote sensing. In order to solve the problems of nonlinearity, the high dimensions and the redundancy of the bands that exist in the hyperspectral data, this paper proposes a dimension reduction method for hyperspectral remote sensing image data based on the global mixture coordination factor analysis. In the first place, a linear low dimensional manifold is obtained from the nonlinear and high dimensional hyperspectral image data by mixture factor analysis method. In the second place, the parameters of linear low dimensional manifold are estimated by the EM algorithm of find a local maximum of the data log-likelihood. In the third place, the manifold is aligned to a global parameterization by the global coordinated factor analysis model and then the lowdimension image data of hyperspectral image data is obtained at last. Through the comparison of different dimensionality reduction method and different classification method for the low-dimensional data, the result illuminates the proposed method can retain maximum spectral information in hyperspectral image data and can eliminate the redundant among bands.

Highlights

  • The hyperspectral remote sensing technology is a new remote sensing technology which developed rapidly in recent years and has become one of pulling power of the remote sensing fields (Goetz, 2009)

  • This paper presents a hyperspectral data dimension reduction method of global mixture coordination factor analysis(GMCFA), first of all, it use a mixture of factor analysis method to obtain a linear low-dimensional manifold from nonlinear high-dimensional original hyperspectral data

  • Participate in contrast dimension reduction method has PCA, the LDA and dimension reduction method which is proposed in this paper; Participate in contrast classification method has a minimum distance method, maximum likelihood method, support vector machine (SVM) method

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Summary

INTRODUCTION

The hyperspectral remote sensing technology is a new remote sensing technology which developed rapidly in recent years and has become one of pulling power of the remote sensing fields (Goetz, 2009). This paper presents a hyperspectral data dimension reduction method of global mixture coordination factor analysis(GMCFA), first of all, it use a mixture of factor analysis method to obtain a linear low-dimensional manifold from nonlinear high-dimensional original hyperspectral data. This method uses the maximum log likelihood algorithm to estimate parameters of the linear low dimensional manifold. It can construct the low dimensional hyperspectral image data by using the global coordination factor analysis model. Under the premise of spectral information sufficient retention, the algorithm is easy to implement, has a fast speed, and it is high efficiency

TITLE AND ABSTRACT BLOCK MATERIALS AND METHODS
Mixed factor model parameter estimation
The improved EM algorithm
THE STUDY AREA AND VALIDATION IMAGES
Dimension reduction effect comparison for different classifier algorithms
Spartina marsh 370
Discussion
CONCLUSION
Full Text
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