Title :
Sparse Inverse Covariance Estimates for Hyperspectral Image Classification
Author :
Berge, Asbjørn ; Jensen, Are C. ; Solberg, Anne H Schistad
Author_Institution :
Dept. of Informatics, Oslo Univ.
fDate :
5/1/2007 12:00:00 AM
Abstract :
Classification of remotely sensed hyperspectral images calls for a classifier that gracefully handles high-dimensional data, where the amount of samples available for training might be very low relative to the dimension. Even when using simple parametric classifiers such as the Gaussian maximum-likelihood rule, the large number of bands leads to copious amounts of parameters to estimate. Most of these parameters are measures of correlations between features. The covariance structure of a multivariate normal population can be simplified by setting elements of the inverse covariance matrix to zero. Well-known results from time series analysis relates the estimation of the inverse covariance matrix to a sequence of regressions by using the Cholesky decomposition. We observe that discriminant analysis can be performed without inverting the covariance matrix. We propose defining a sparsity pattern on the lower triangular matrix resulting from the Cholesky decomposition, and develop a simple search algorithm for choosing this sparsity. The resulting classifier is used on four different hyperspectral images, and compared with conventional approaches such as support vector machines, with encouraging results
Keywords :
covariance analysis; image classification; remote sensing; Cholesky decomposition; Gaussian maximum-likelihood rule; discriminant analysis; hyperspectral images; image classification; remote sensing; sparse inverse covariance; time series analysis; Covariance matrix; Hyperspectral imaging; Hyperspectral sensors; Image classification; Matrix decomposition; Maximum likelihood estimation; Parameter estimation; Performance analysis; Support vector machines; Time series analysis; Cholesky decomposition; covariance parametrization; hyperspectral image classification; inverse covariance matrix; sparse regression;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2007.892598