Title :
Machine learning techniques for the inversion of planetary hyperspectral images
Author :
Bernard-Michel, C. ; Douté, S. ; Fauvel, M. ; Gardes, L. ; Girard, S.
Author_Institution :
MISTIS, INRIA Rhone-Alpes & Lab. Jean Kuntzmann, Grenoble, France
Abstract :
In this paper, the physical analysis of planetary hyperspectral images is addressed. To deal with high dimensional spaces (image cubes present 256 bands), two methods are proposed. The first method is the support vectors machines regression (SVM-R) which applies the structural risk minimization to perform a non-linear regression. Several kernels are investigated in this work. The second method is the Gaussian regularized sliced inverse regression (GRSIR). It is a two step strategy; the data are map onto a lower dimensional vector space where the regression is performed. Experimental results on simulated data sets have showed that the SVM-R is the most accurate method. However, when dealing with real data sets, the GRSIR gives the most interpretable results.
Keywords :
Gaussian processes; astronomical image processing; learning (artificial intelligence); regression analysis; spectral analysis; support vector machines; Gaussian regularized sliced inverse regression; SVM-R; high dimensional space; lower dimensional vector space; machine learning; nonlinear regression; physical analysis; planetary hyperspectral image inversion; structural risk minimization; support vector machine regression; Hyperspectral imaging; Hyperspectral sensors; Inverse problems; Machine learning; Nearest neighbor searches; Neural networks; Optimization methods; Planets; Support vector machines; Table lookup; Gaussian regularized sliced inversion regression; Hyperspectral images; Mars surface; SVM;
Conference_Titel :
Hyperspectral Image and Signal Processing: Evolution in Remote Sensing, 2009. WHISPERS '09. First Workshop on
Conference_Location :
Grenoble
Print_ISBN :
978-1-4244-4686-5
Electronic_ISBN :
978-1-4244-4687-2
DOI :
10.1109/WHISPERS.2009.5289010