DocumentCode
26634
Title
Nonlinearity Detection in Hyperspectral Images Using a Polynomial Post-Nonlinear Mixing Model
Author
Altmann, Yoann ; Dobigeon, Nicolas ; Tourneret, Jean-Yves
Author_Institution
IRIT/INP-ENSEEIHT/TeSA, Univ. of Toulouse, Toulouse, France
Volume
22
Issue
4
fYear
2013
fDate
Apr-13
Firstpage
1267
Lastpage
1276
Abstract
This paper studies a nonlinear mixing model for hyperspectral image unmixing and nonlinearity detection. The proposed model assumes that the pixel reflectances are nonlinear functions of pure spectral components contaminated by an additive white Gaussian noise. These nonlinear functions are approximated by polynomials leading to a polynomial post-nonlinear mixing model. We have shown in a previous paper that the parameters involved in the resulting model can be estimated using least squares methods. A generalized likelihood ratio test based on the estimator of the nonlinearity parameter is proposed to decide whether a pixel of the image results from the commonly used linear mixing model or from a more general nonlinear mixing model. To compute the test statistic associated with the nonlinearity detection, we propose to approximate the variance of the estimated nonlinearity parameter by its constrained Cramér-Rao bound. The performance of the detection strategy is evaluated via simulations conducted on synthetic and real data. More precisely, synthetic data have been generated according to the standard linear mixing model and three nonlinear models from the literature. The real data investigated in this study are extracted from the Cuprite image, which shows that some minerals seem to be nonlinearly mixed in this image. Finally, it is interesting to note that the estimated abundance maps obtained with the post-nonlinear mixing model are in good agreement with results obtained in previous studies.
Keywords
AWGN; geophysical image processing; hyperspectral imaging; least squares approximations; nonlinear functions; parameter estimation; polynomials; statistical testing; Cuprite image; additive white Gaussian noise; constrained Cramér-Rao bound; detection strategy; estimated abundance maps; generalized likelihood ratio test; hyperspectral image unmixing; hyperspectral images; least squares methods; nonlinear functions; nonlinearity detection; nonlinearity parameter estimation; pixel reflectances; polynomial post-nonlinear mixing model; polynomials; pure spectral components; real data; standard linear mixing model; synthetic data; test statistic; Approximation methods; Hyperspectral imaging; Materials; Maximum likelihood estimation; Noise; Polynomials; Vectors; Constrained Cramér–Rao bound; nonlinearity detection; post-nonlinear mixing model (PPNMM); spectral unmixing (SU);
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2012.2210235
Filename
6247506
Link To Document