DocumentCode
47140
Title
Multiple Morphological Profiles From Multicomponent-Base Images for Hyperspectral Image Classification
Author
Xin Huang ; Xuehua Guan ; Benediktsson, Jon Atli ; Liangpei Zhang ; Jun Li ; Plaza, Antonio ; Dalla Mura, Mauro
Author_Institution
State Key Lab. of Inf. Eng. in Surveying, Wuhan Univ., Wuhan, China
Volume
7
Issue
12
fYear
2014
fDate
Dec. 2014
Firstpage
4653
Lastpage
4669
Abstract
Morphological profiles (MPs) are a useful tool for remotely sensed image classification. These profiles are constructed on a base image that can be a single band of a multicomponent remote sensing image. Principal component analysis (PCA) has been used to provide other base images to construct MPs in high-dimensional remote sensing scenes such as hyperspectral images [e.g., by deriving the first principal components (PCs) and building the MPs on the first few components]. In this paper, we discuss several strategies for producing the base images for MPs, and further categorize the considered methods into four classes: linear, nonlinear, manifold learning-based, and multilinear transformation-based. It is found that the multilinear PCA (MPCA) is a powerful approach for base image extraction. That is because it is a tensor-based feature representation approach, which is able to simultaneously exploit the spectral-spatial correlation between neighboring pixels. We also show that independent component analysis (ICA) is more effective for constructing base images than PCA. Another important contribution of this paper is a new concept of multiple MPs (MMPs), aimed at synthesizing the spectral-spatial information extracted from the multicomponent base images, and further enhancing the classification accuracy of MPs. Moreover, we propose two different strategies to interpret the newly proposed MMPs by considering their hyperdimensional feature space: decision fusion and sparse classifier based on multinomial logistic regression (MLR). Experiments conducted on three well-known hyperspectral datasets are used to quantitatively assess the accuracy of different algorithms.
Keywords
feature extraction; geophysical image processing; hyperspectral imaging; image classification; image fusion; image representation; independent component analysis; learning (artificial intelligence); principal component analysis; regression analysis; remote sensing; transforms; ICA; MLR; MMP; MPCA; decision fusion; hyperdimensional feature space; hyperspectral image classification; image extraction; independent component analysis; linear method; manifold learning-based method; multicomponent remote sensing image; multicomponent-base image classification; multilinear principal component analysis; multilinear transformation-based method; multinomial logistic regression; multiple morphological profile; nonlinear method; remotely sensed image classification; sparse classifier; spectral- spatial correlation; spectral-spatial information extraction synthesis; tensor-based feature representation approach; Feature extraction; Hyperspectral imaging; Manifolds; Principal component analysis; Spatial analysis; Feature extraction (FE); hyperspectral imaging; morphological profiles (MPs); spectral–spatial classification; spectral???spatial classification;
fLanguage
English
Journal_Title
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher
ieee
ISSN
1939-1404
Type
jour
DOI
10.1109/JSTARS.2014.2342281
Filename
6884769
Link To Document