Applications of Independent Component Analysis in Endmember Extraction and Abundance Quantification for Hyperspectral Imagery
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Wang, J., and C.-I. Chang. “Applications of Independent Component Analysis in Endmember Extraction and Abundance Quantification for Hyperspectral Imagery.” IEEE Transactions on Geoscience and Remote Sensing 44, no. 9 (21 August 2006): 2601–16. https://doi.org/10.1109/TGRS.2006.874135.
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© 2006 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.
Subjects
abundance quantification
Abundance-constrained linear spectral mixture analysis (ACLSMA)
endmember extraction
FastICA
high-order statistics-based independent component (IC) prioritization algorithm (HOS-ICPA)
Hyperspectral imaging
Hyperspectral sensors
IC prioritization
ICA-based endmember extraction algorithm (ICA-EEA)
Image analysis
Image processing
Independent component analysis
independent component analysis (ICA)-based abundance quantification algorithm (ICA-AQA)
initialization driven-based IC prioritization algorithm (ID-ICPA)
Pixel
Remote sensing
Signal processing algorithms
Spatial resolution
Spectral analysis
virtual dimensionality (VD)
Abundance-constrained linear spectral mixture analysis (ACLSMA)
endmember extraction
FastICA
high-order statistics-based independent component (IC) prioritization algorithm (HOS-ICPA)
Hyperspectral imaging
Hyperspectral sensors
IC prioritization
ICA-based endmember extraction algorithm (ICA-EEA)
Image analysis
Image processing
Independent component analysis
independent component analysis (ICA)-based abundance quantification algorithm (ICA-AQA)
initialization driven-based IC prioritization algorithm (ID-ICPA)
Pixel
Remote sensing
Signal processing algorithms
Spatial resolution
Spectral analysis
virtual dimensionality (VD)
Abstract
Independent component analysis (ICA) has shown success in many applications. This paper investigates a new application of the ICA in endmember extraction and abundance quantification for hyperspectral imagery. An endmember is generally referred to as an idealized pure signature for a class whose presence is considered to be rare. When it occurs, it may not appear in large population. In this case, the commonly used principal components analysis may not be effective since endmembers usually contribute very little in statistics to data variance. In order to substantiate the author's findings, an ICA-based approach, called ICA-based abundance quantification algorithm (ICA-AQA) is developed. Three novelties result from the author's proposed ICA-AQA. First, unlike the commonly used least squares abundance-constrained linear spectral mixture analysis (ACLSMA) which is a second-order statistics-based method, the ICA-AQA is a high-order statistics-based technique. Second, due to the use of statistical independency, it is generally thought that the ICA cannot be implemented as a constrained method. The ICA-AQA shows otherwise. Third, in order for the ACLSMA to perform the abundance quantification, it requires an algorithm to find image endmembers first then followed by an abundance-constrained algorithm for quantification. As opposed to such a two-stage process, the ICA-AQA can accomplish endmember extraction and abundance quantification simultaneously in one-shot operation. Experimental results demonstrate that the ICA-AQA performs at least comparably to abundance-constrained methods
