학술논문

Randomized SVD Methods in Hyperspectral Imaging.
Document Type
Article
Source
Journal of Electrical & Computer Engineering. 2012, p1-15. 15p. 2 Black and White Photographs, 1 Chart, 14 Graphs.
Subject
*SINGULAR value decomposition
*HYPERSPECTRAL imaging systems
*DATA compression
*DATA recovery
*APPROXIMATION theory
*ERROR analysis in mathematics
*PRINCIPAL components analysis
*NUMERICAL analysis
Language
ISSN
2090-0147
Abstract
We present a randomized singular value decomposition (rSVD) method for the purposes of lossless compression, reconstruction, classification, and target detection with hyperspectral (HSI) data. Recent work in low-rank matrix approximations obtained from random projections suggests that these approximations are well suited for randomized dimensionality reduction. Approximation errors for the rSVD are evaluated on HSI, and comparisons are made to deterministic techniques and as well as to other randomized low-rank matrix approximation methods involving compressive principal component analysis. Numerical tests on real HSI data suggest that the method is promising and is particularly effective for HSI data interrogation. [ABSTRACT FROM AUTHOR]