Title :
Band Selection for Hyperspectral Image Classification Using Mutual Information
Author :
Guo, Baofeng ; Gunn, Steve R. ; Damper, R.I. ; Nelson, J.D.B.
Author_Institution :
Sch. of Electron. & Comput. Sci., Southampton Univ.
Abstract :
Spectral band selection is a fundamental problem in hyperspectral data processing. In this letter, a new band-selection method based on mutual information (MI) is proposed. MI measures the statistical dependence between two random variables and can therefore be used to evaluate the relative utility of each band to classification. A new strategy is described to estimate the MI using a priori knowledge of the scene, reducing reliance on a "ground truth" reference map, by retaining bands with high associated MI values (subject to the so-called "complementary" conditions). Simulations of classification performance on 16 classes of vegetation from the AVIRIS 92AV3C data set show the effectiveness of the method, which outperforms an MI-based method using the associated reference map, an entropy-based method, and a correlation-based method. It is also competitive with the steepest ascent algorithm at much lower computational cost
Keywords :
image classification; multidimensional signal processing; vegetation; vegetation mapping; AVIRIS 92AV3C data set; ascent algorithm; correlation method; entropy method; ground truth reference map; hyperspectral data processing; hyperspectral image classification; image region classification; mutual information; remote sensing; spectral band selection; statistical dependence; support vector machines; vegetation; Computational efficiency; Data processing; Gunn devices; Hyperspectral imaging; Hyperspectral sensors; Image classification; Image databases; Layout; Mutual information; Random variables; Hyperspectral imaging; image region classification; mutual information; remote sensing; spectral band selection; support vector machines (SVMs);
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2006.878240