1 January 2006 Independent-component analysis for hyperspectral remote sensing imagery classification
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Abstract
We investigate the application of independent-component analysis (ICA) to remotely sensed hyperspectral image classification. We focus on the performance of two well-known and frequently used ICA algorithms: joint approximate diagonalization of eigenmatrices (JADE) and FastICA; but the proposed method is applicable to other ICA algorithms. The major advantage of using ICA is its ability to classify objects with unknown spectral signatures in an unknown image scene, i.e., unsupervised classification. However, ICA suffers from computational expensiveness, which limits its application to high-dimensional data analysis. In order to make it applicable or reduce the computation time in hyperspectral image classification, a data-preprocessing procedure is employed to reduce the data dimensionality. Instead of using principal-component analysis (PCA), a noise-adjusted principal-components (NAPC) transform is employed for this purpose, which can reorganize the original data with respect to the signal-to-noise ratio, a more appropriate image-ranking criterion than variance in PCA. The experimental results demonstrate that the major principal components from the NAPC transform can better maintain the object information in the original data than those from PCA. As a result, an ICA algorithm can provide better object classification.
©(2006) Society of Photo-Optical Instrumentation Engineers (SPIE)
Qian Du, Ivica Kopriva, and Harold H. Szu "Independent-component analysis for hyperspectral remote sensing imagery classification," Optical Engineering 45(1), 017008 (1 January 2006). https://doi.org/10.1117/1.2151172
Published: 1 January 2006
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Cited by 39 scholarly publications.
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KEYWORDS
Independent component analysis

Principal component analysis

Image classification

Hyperspectral imaging

Optical engineering

Remote sensing

Signal to noise ratio

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